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Distance Based Pattern Driven Mining for Outlier Detection in High Dimensional Big Dataset

Detection of outliers or anomalies is one of the vital issues in pattern-driven data mining. Outlier detection detects the inconsistent behavior of individual objects. It is an important sector in the data mining field with several different applications such as detecting credit card fraud, hacking discovery and discovering criminal activities. It is necessary to develop tools used to uncover the critical information established in the extensive data. This paper investigated a novel method for detecting cluster outliers in a multidimensional dataset, capable of identifying the clusters and outliers for datasets containing noise. The proposed method can detect the groups and outliers left by the clustering process, like instant irregular sets of clusters (C) and outliers (O), to boost the results. The results obtained after applying the algorithm to the dataset improved in terms of several parameters. For the comparative analysis, the accurate average value and the recall value parameters are computed. The accurate average value is 74.05% of the existing COID algorithm, and our proposed algorithm has 77.21%. The average recall value is 81.19% and 89.51% of the existing and proposed algorithm, which shows that the proposed work efficiency is better than the existing COID algorithm.

Implementation of Data Mining Technology in Bonded Warehouse Inbound and Outbound Goods Trade

For the taxed goods, the actual freight is generally determined by multiplying the allocated freight for each KG and actual outgoing weight based on the outgoing order number on the outgoing bill. Considering the conventional logistics is insufficient to cope with the rapid response of e-commerce orders to logistics requirements, this work discussed the implementation of data mining technology in bonded warehouse inbound and outbound goods trade. Specifically, a bonded warehouse decision-making system with data warehouse, conceptual model, online analytical processing system, human-computer interaction module and WEB data sharing platform was developed. The statistical query module can be used to perform statistics and queries on warehousing operations. After the optimization of the whole warehousing business process, it only takes 19.1 hours to get the actual freight, which is nearly one third less than the time before optimization. This study could create a better environment for the development of China's processing trade.

Multi-objective economic load dispatch method based on data mining technology for large coal-fired power plants

User activity classification and domain-wise ranking through social interactions.

Twitter has gained a significant prevalence among the users across the numerous domains, in the majority of the countries, and among different age groups. It servers a real-time micro-blogging service for communication and opinion sharing. Twitter is sharing its data for research and study purposes by exposing open APIs that make it the most suitable source of data for social media analytics. Applying data mining and machine learning techniques on tweets is gaining more and more interest. The most prominent enigma in social media analytics is to automatically identify and rank influencers. This research is aimed to detect the user's topics of interest in social media and rank them based on specific topics, domains, etc. Few hybrid parameters are also distinguished in this research based on the post's content, post’s metadata, user’s profile, and user's network feature to capture different aspects of being influential and used in the ranking algorithm. Results concluded that the proposed approach is well effective in both the classification and ranking of individuals in a cluster.

A data mining analysis of COVID-19 cases in states of United States of America

Epidemic diseases can be extremely dangerous with its hazarding influences. They may have negative effects on economies, businesses, environment, humans, and workforce. In this paper, some of the factors that are interrelated with COVID-19 pandemic have been examined using data mining methodologies and approaches. As a result of the analysis some rules and insights have been discovered and performances of the data mining algorithms have been evaluated. According to the analysis results, JRip algorithmic technique had the most correct classification rate and the lowest root mean squared error (RMSE). Considering classification rate and RMSE measure, JRip can be considered as an effective method in understanding factors that are related with corona virus caused deaths.

Exploring distributed energy generation for sustainable development: A data mining approach

A comprehensive guideline for bengali sentiment annotation.

Sentiment Analysis (SA) is a Natural Language Processing (NLP) and an Information Extraction (IE) task that primarily aims to obtain the writer’s feelings expressed in positive or negative by analyzing a large number of documents. SA is also widely studied in the fields of data mining, web mining, text mining, and information retrieval. The fundamental task in sentiment analysis is to classify the polarity of a given content as Positive, Negative, or Neutral . Although extensive research has been conducted in this area of computational linguistics, most of the research work has been carried out in the context of English language. However, Bengali sentiment expression has varying degree of sentiment labels, which can be plausibly distinct from English language. Therefore, sentiment assessment of Bengali language is undeniably important to be developed and executed properly. In sentiment analysis, the prediction potential of an automatic modeling is completely dependent on the quality of dataset annotation. Bengali sentiment annotation is a challenging task due to diversified structures (syntax) of the language and its different degrees of innate sentiments (i.e., weakly and strongly positive/negative sentiments). Thus, in this article, we propose a novel and precise guideline for the researchers, linguistic experts, and referees to annotate Bengali sentences immaculately with a view to building effective datasets for automatic sentiment prediction efficiently.

Capturing Dynamics of Information Diffusion in SNS: A Survey of Methodology and Techniques

Studying information diffusion in SNS (Social Networks Service) has remarkable significance in both academia and industry. Theoretically, it boosts the development of other subjects such as statistics, sociology, and data mining. Practically, diffusion modeling provides fundamental support for many downstream applications (e.g., public opinion monitoring, rumor source identification, and viral marketing). Tremendous efforts have been devoted to this area to understand and quantify information diffusion dynamics. This survey investigates and summarizes the emerging distinguished works in diffusion modeling. We first put forward a unified information diffusion concept in terms of three components: information, user decision, and social vectors, followed by a detailed introduction of the methodologies for diffusion modeling. And then, a new taxonomy adopting hybrid philosophy (i.e., granularity and techniques) is proposed, and we made a series of comparative studies on elementary diffusion models under our taxonomy from the aspects of assumptions, methods, and pros and cons. We further summarized representative diffusion modeling in special scenarios and significant downstream tasks based on these elementary models. Finally, open issues in this field following the methodology of diffusion modeling are discussed.

The Influence of E-book Teaching on the Motivation and Effectiveness of Learning Law by Using Data Mining Analysis

This paper studies the motivation of learning law, compares the teaching effectiveness of two different teaching methods, e-book teaching and traditional teaching, and analyses the influence of e-book teaching on the effectiveness of law by using big data analysis. From the perspective of law student psychology, e-book teaching can attract students' attention, stimulate students' interest in learning, deepen knowledge impression while learning, expand knowledge, and ultimately improve the performance of practical assessment. With a small sample size, there may be some deficiencies in the research results' representativeness. To stimulate the learning motivation of law as well as some other theoretical disciplines in colleges and universities has particular referential significance and provides ideas for the reform of teaching mode at colleges and universities. This paper uses a decision tree algorithm in data mining for the analysis and finds out the influencing factors of law students' learning motivation and effectiveness in the learning process from students' perspective.

Intelligent Data Mining based Method for Efficient English Teaching and Cultural Analysis

The emergence of online education helps improving the traditional English teaching quality greatly. However, it only moves the teaching process from offline to online, which does not really change the essence of traditional English teaching. In this work, we mainly study an intelligent English teaching method to further improve the quality of English teaching. Specifically, the random forest is firstly used to analyze and excavate the grammatical and syntactic features of the English text. Then, the decision tree based method is proposed to make a prediction about the English text in terms of its grammar or syntax issues. The evaluation results indicate that the proposed method can effectively improve the accuracy of English grammar or syntax recognition.

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Trending Data Mining Thesis Topics

            Data mining seems to be the act of analyzing large amounts of data in order to uncover business insights that can assist firms in fixing issues, reducing risks, and embracing new possibilities . This article provides a complete picture on data mining thesis topics where you can get all information regarding data mining research

How to Implement Data Mining Thesis Topics

How does data mining work?

  • A standard data mining design begins with the appropriate business statement in the questionnaire, the appropriate data is collected to tackle it, and the data is prepared for the examination.
  • What happens in the earlier stages determines how successful the later versions are.
  • Data miners should assure the data quality they utilize as input for research because bad data quality results in poor outcomes.
  • Establishing a detailed understanding of the design factors, such as the present business scenario, the project’s main business goal, and the performance objectives.
  • Identifying the data required to address the problem as well as collecting this from all sorts of sources.
  • Addressing any errors and bugs, like incomplete or duplicate data, and processing the data in a suitable format to solve the research questions.
  • Algorithms are used to find patterns from data.
  • Identifying if or how another model’s output will contribute to the achievement of a business objective.
  • In order to acquire the optimum outcome, an iterative process is frequently used to identify the best method.
  • Getting the project’s findings suitable for making decisions in real-time

  The techniques and actions listed above are repeated until the best outcomes are achieved. Our engineers and developers have extensive knowledge of the tools, techniques, and approaches used in the processes described above. We guarantee that we will provide the best research advice w.r.t to data mining thesis topics and complete your project on schedule. What are the important data mining tasks?

Data Mining Tasks 

  • Data mining finds application in many ways including description, Analysis, summarization of data, and clarifying the conceptual understanding by data description
  • And also prediction, classification, dependency analysis, segmentation, and case-based reasoning are some of the important data mining tasks
  • Regression – numerical data prediction (stock prices, temperatures, and total sales)
  • Data warehousing – business decision making and large-scale data mining
  • Classification – accurate prediction of target classes and their categorization
  • Association rule learning – market-based analytical tools that were involved in establishing variable data set relationship
  • Machine learning – statistical probability-based decision making method without complicated programming
  • Data analytics – digital data evaluation for business purposes
  • Clustering – dataset partitioning into clusters and subclasses for analyzing natural data structure and format
  • Artificial intelligence – human-based Data analytics for reasoning, solving problems, learning, and planning
  • Data preparation and cleansing – conversion of raw data into a processed form for identification and removal of errors

You can look at our website for a more in-depth look at all of these operations. We supply you with the needed data, as well as any additional data you may need for your data mining thesis topics . We supply non-plagiarized data mining thesis assistance in any fresh idea of your choice. Let us now discuss the stages in data mining that are to be included in your thesis topics

How to work on a data mining thesis topic? 

 The following are the important stages or phases in developing data mining thesis topics.

  • First of all, you need to identify the present demand and address the question
  • The next step is defining or specifying the problem
  • Collection of data is the third step
  • Alternative solutions and designs have to be analyzed in the next step
  • The proposed methodology has to be designed
  • The system is then to be implemented

Usually, our experts help in writing codes and implementing them successfully without hassles . By consistently following the above steps you can develop one of the best data mining thesis topics of recent days. Furthermore, technically it is important for you to have a better idea of all the tasks and techniques involved in data mining about which we have discussed below

  • Data visualization
  • Neural networks
  • Statistical modeling
  • Genetic algorithms and neural networks
  • Decision trees and induction
  • Discriminant analysis
  • Induction techniques
  • Association rules and data visualization
  • Bayesian networks
  • Correlation
  • Regression analysis
  • Regression analysis and regression trees

If you are looking forward to selecting the best tool for your data mining project then evaluating its consistency and efficiency stands first. For this, you need to gain enough technical data from real-time executed projects for which you can directly contact us. Since we have delivered an ample number of data mining thesis topics successfully we can help you in finding better solutions to all your research issues. What are the points to be remembered about the data mining strategy?

  • Furthermore, data mining strategies must be picked before instruments in order to prevent using strategies that do not align with the article’s true purposes.
  • The typical data mining strategy has always been to evaluate a variety of methodologies in order to select one which best fits the situation.
  • As previously said, there are some principles that may be used to choose effective strategies for data mining projects.
  • Since they are easy to handle and comprehend
  • They could indeed collaborate with definitional and parametric data
  • Tare unaffected by critical values, they could perhaps function with incomplete information
  • They could also expose various interrelationships and an absence of linear combinations
  • They could indeed handle noise in records
  • They can process huge amounts of data.
  • Decision trees, on the other hand, have significant drawbacks.
  • Many rules are frequently necessary for dependent variables or numerous regressions, and tiny changes in the data can result in very different tree architectures.

All such pros and cons of various data mining aspects are discussed on our website. We will provide you with high-quality research assistance and thesis writing assistance . You may see proof of our skill and the unique approach that we generated in the field by looking at the samples of the thesis that we produced on our website. We also offer an internal review to help you feel more confident. Let us now discuss the recent data mining methodologies

Current methods in Data Mining

  • Prediction of data (time series data mining)
  • Discriminant and cluster analysis
  • Logistic regression and segmentation

Our technical specialists and technicians usually give adequate accurate data, a thorough and detailed explanation, and technical notes for all of these processes and algorithms. As a result, you can get all of your questions answered in one spot. Our technical team is also well-versed in current trends, allowing us to provide realistic explanations for all new developments. We will now talk about the latest data mining trends

Latest Trending Data Mining Thesis Topics

  • Visual data mining and data mining software engineering
  • Interaction and scalability in data mining
  • Exploring applications of data mining
  • Biological and visual data mining
  • Cloud computing and big data integration
  • Data security and protecting privacy in data mining
  • Novel methodologies in complex data mining
  • Data mining in multiple databases and rationalities
  • Query language standardization in data mining
  • Integration of MapReduce, Amazon EC2, S3, Apache Spark, and Hadoop into data mining

These are the recent trends in data mining. We insist that you choose one of the topics that interest you the most. Having an appropriate content structure or template is essential while writing a thesis . We design the plan in a chronological order relevant to the study assessment with this in mind. The incorporation of citations is one of the most important aspects of the thesis. We focus not only on authoring but also on citing essential sources in the text. Students frequently struggle to deal with appropriate proposals when commencing their thesis. We have years of experience in providing the greatest study and data mining thesis writing services to the scientific community, which are promptly and widely acknowledged. We will now talk about future research directions of research in various data mining thesis topics

Future Research Directions of Data Mining

  • The potential of data mining and data science seems promising, as the volume of data continues to grow.
  • It is expected that the total amount of data in our digital cosmos will have grown from 4.4 zettabytes to 44 zettabytes.
  • We’ll also generate 1.7 gigabytes of new data for every human being on this planet each second.
  • Mining algorithms have completely transformed as technology has advanced, and thus have tools for obtaining useful insights from data.
  • Only corporations like NASA could utilize their powerful computers to examine data once upon a time because the cost of producing and processing data was simply too high.
  • Organizations are now using cloud-based data warehouses to accomplish any kinds of great activities with machine learning, artificial intelligence, and deep learning.

The Internet of Things as well as wearable electronics, for instance, has transformed devices to be connected into data-generating engines which provide limitless perspectives into people and organizations if firms can gather, store, and analyze the data quickly enough. What are the aspects to be remembered for choosing the best  data mining thesis topics?

  • An excellent thesis topic is a broad concept that has to be developed, verified, or refuted.
  • Your thesis topic must capture your curiosity, as well as the involvement of both the supervisor and the academicians.
  • Your thesis topic must be relevant to your studies and should be able to withstand examination.

Our engineers and experts can provide you with any type of research assistance on any of these data mining development tools . We satisfy the criteria of your universities by ensuring several revisions, appropriate formatting and editing of your thesis, comprehensive grammar check, and so on . As a result, you can contact us with confidence for complete assistance with your data mining thesis. What are the important data mining thesis topics?

Trending Data Mining Research Thesis Topics

Research Topics in Data Mining

  • Handling cost-effective, unbalanced non-static data
  • Issues related to data mining and their solutions
  • Network settings in data mining and ensuring privacy, security, and integrity of data
  • Environmental and biological issues in data mining
  • Complex data mining and sequential data mining (time series data)
  • Data mining at higher dimensions
  • Multi-agent data mining and distributed data mining
  • High-speed data mining
  • Development of unified data mining theory

We currently provide full support for all parts of research study, development, investigation, including project planning, technical advice, legitimate scientific data, thesis writing, paper publication, assignments and project planning, internal review, and many other services. As a result, you can contact us for any kind of help with your data mining thesis topics.

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82 Data Mining Essay Topic Ideas & Examples

🏆 best data mining topic ideas & essay examples, 💡 good essay topics on data mining, ✅ most interesting data mining topics to write about.

  • Disadvantages of Using Web 2.0 for Data Mining Applications This data can be confusing to the readers and may not be reliable. Lastly, with the use of Web 2.
  • Data Mining Classifiers: The Advantages and Disadvantages One of the major disadvantages of this algorithm is the fact that it has to generate distance measures for all the recorded attributes. We will write a custom essay specifically for you by our professional experts 808 writers online Learn More
  • Data Warehouse and Data Mining in Business The circumstances leading to the establishment and development of the concept of data warehousing was attributed to the fact that failure to have a data warehouse led to the need of putting in place large […]
  • Summary of C4.5 Algorithm: Data Mining 5 algorism: Each record from set of data should be associated with one of the offered classes, it means that one of the attributes of the class should be considered as a class mark.
  • The Data Mining Method in Healthcare and Education Thus, I would use data mining in both cases; however, before that, I would discover a way to improve the algorithms used for it.
  • Data Mining Tools and Data Mining Myths The first problem is correlated with keeping the identity of the person evolved in data mining secret. One of the major myths regarding data mining is that it can replace domain knowledge.
  • Hybrid Data Mining Approach in Healthcare One of the healthcare projects that will call for the use of data mining is treatment evaluation. In this case, it is essential to realize that the main aim of health data mining is to […]
  • Terrorism and Data Mining Algorithms However, this is a necessary evil as the nation’s security has to be prioritized since these attacks lead to harm to a larger population compared to the infringements.
  • Data Mining and Its Major Advantages Thus, it is possible to conclude that data mining is a convenient and effective way of processing information, which has many advantages.
  • Transforming Coded and Text Data Before Data Mining However, to complete data mining, it is necessary to transform the data according to the techniques that are to be used in the process.
  • Data Mining and Machine Learning Algorithms The shortest distance of string between two instances defines the distance of measure. However, this is also not very clear as to which transformations are summed, and thus it aims to a probability with the […]
  • Data Mining in Social Networks: Linkedin.com One of the ways to achieve the aim is to understand how users view data mining of their data on LinkedIn.
  • Ethnography and Data Mining in Anthropology The study of cultures is of great importance under normal circumstances to enhance the understanding of the same. Data mining is the success secret of ethnography.
  • Issues With Data Mining It is necessary to note that the usage of data mining helps FBI to have access to the necessary information for terrorism and crime tracking.
  • Large Volume Data Handling: An Efficient Data Mining Solution Data mining is the process of sorting huge amount of data and finding out the relevant data. Data mining is widely used for the maintenance of data which helps a lot to an organization in […]
  • Data Mining and Analytical Developments In this era where there is a lot of information to be handled at ago and actually with little available time, it is necessarily useful and wise to analyze data from different viewpoints and summarize […]
  • Levi’s Company’s Data Mining & Customer Analytics Levi, the renowned name in jeans is feeling the heat of competition from a number of other brands, which have come upon the scene well after Levi’s but today appear to be approaching Levi’s market […]
  • Cryptocurrency Exchange Market Prediction and Analysis Using Data Mining and Artificial Intelligence This paper aims to review the application of A.I.in the context of blockchain finance by examining scholarly articles to determine whether the A.I.algorithm can be used to analyze this financial market.
  • Data Mining in Healthcare: Applications and Big Data Analyze Big data analysis is among the most influential modern trends in informatics and it has applications in virtually every sphere of human life.
  • “Data Mining and Customer Relationship Marketing in the Banking Industry“ by Chye & Gerry First of all, the article generally elaborates on the notion of customer relationship management, which is defined as “the process of predicting customer behavior and selecting actions to influence that behavior to benefit the company”.
  • Data Mining Techniques and Applications The use of data mining to detect disturbances in the ecosystem can help to avert problems that are destructive to the environment and to society.
  • Ethical Data Mining in the UAE Traffic Department The research question identified in the assignment two is considered to be the following, namely whether the implementation of the business intelligence into the working process will beneficially influence the work of the Traffic Department […]
  • Canadian University Dubai and Data Mining The aim of mining data in the education environment is to enhance the quality of education for the mass through proactive and knowledge-based decision-making approaches.
  • Data Mining and Customer Relationship Management As such, CRM not only entails the integration of marketing, sales, customer service, and supply chain capabilities of the firm to attain elevated efficiencies and effectiveness in conveying customer value, but it obliges the organization […]
  • E-Commerce: Mining Data for Better Business Intelligence The method allowed the use of Intel and an example to build the study and the literature on data mining for business intelligence to analyze the findings.
  • Ethical Implications of Data Mining by Government Institutions Critics of personal data mining insist that it infringes on the rights of an individual and result to the loss of sensitive information.
  • Data Mining Role in Companies The increasing adoption of data mining in various sectors illustrates the potential of the technology regarding the analysis of data by entities that seek information crucial to their operations.
  • Data Mining: Concepts and Methods Speed of data mining process is important as it has a role to play in the relevance of the data mined. The accuracy of data is also another factor that can be used to measure […]
  • Data Mining Technologies According to Han & Kamber, data mining is the process of discovering correlations, patterns, trends or relationships by searching through a large amount of data that in most circumstances is stored in repositories, business databases […]
  • Data Mining: A Critical Discussion In recent times, the relatively new discipline of data mining has been a subject of widely published debate in mainstream forums and academic discourses, not only due to the fact that it forms a critical […]
  • Commercial Uses of Data Mining Data mining process entails the use of large relational database to identify the correlation that exists in a given data. The principal role of the applications is to sift the data to identify correlations.
  • A Discussion on the Acceptability of Data Mining Today, more than ever before, individuals, organizations and governments have access to seemingly endless amounts of data that has been stored electronically on the World Wide Web and the Internet, and thus it makes much […]
  • Applying Data Mining Technology for Insurance Rate Making: Automobile Insurance Example
  • Applebee’s, Travelocity and Others: Data Mining for Business Decisions
  • Applying Data Mining Procedures to a Customer Relationship
  • Business Intelligence as Competitive Tool of Data Mining
  • Overview of Accounting Information System Data Mining
  • Applying Data Mining Technique to Disassembly Sequence Planning
  • Approach for Image Data Mining Cultural Studies
  • Apriori Algorithm for the Data Mining of Global Cyberspace Security Issues
  • Database Data Mining: The Silent Invasion of Privacy
  • Data Management: Data Warehousing and Data Mining
  • Constructive Data Mining: Modeling Consumers’ Expenditure in Venezuela
  • Data Mining and Its Impact on Healthcare
  • Innovations and Perspectives in Data Mining and Knowledge Discovery
  • Data Mining and Machine Learning Methods for Cyber Security Intrusion Detection
  • Linking Data Mining and Anomaly Detection Techniques
  • Data Mining and Pattern Recognition Models for Identifying Inherited Diseases
  • Credit Card Fraud Detection Through Data Mining
  • Data Mining Approach for Direct Marketing of Banking Products
  • Constructive Data Mining: Modeling Argentine Broad Money Demand
  • Data Mining-Based Dispatching System for Solving the Pickup and Delivery Problem
  • Commercially Available Data Mining Tools Used in the Economic Environment
  • Data Mining Climate Variability as an Indicator of U.S. Natural Gas
  • Analysis of Data Mining in the Pharmaceutical Industry
  • Data Mining-Driven Analysis and Decomposition in Agent Supply Chain Management Networks
  • Credit Evaluation Model for Banks Using Data Mining
  • Data Mining for Business Intelligence: Multiple Linear Regression
  • Cluster Analysis for Diabetic Retinopathy Prediction Using Data Mining Techniques
  • Data Mining for Fraud Detection Using Invoicing Data
  • Jaeger Uses Data Mining to Reduce Losses From Crime and Waste
  • Data Mining for Industrial Engineering and Management
  • Business Intelligence and Data Mining – Decision Trees
  • Data Mining for Traffic Prediction and Intelligent Traffic Management System
  • Building Data Mining Applications for CRM
  • Data Mining Optimization Algorithms Based on the Swarm Intelligence
  • Big Data Mining: Challenges, Technologies, Tools, and Applications
  • Data Mining Solutions for the Business Environment
  • Overview of Big Data Mining and Business Intelligence Trends
  • Data Mining Techniques for Customer Relationship Management
  • Classification-Based Data Mining Approach for Quality Control in Wine Production
  • Data Mining With Local Model Specification Uncertainty
  • Employing Data Mining Techniques in Testing the Effectiveness of Modernization Theory
  • Enhancing Information Management Through Data Mining Analytics
  • Evaluating Feature Selection Methods for Learning in Data Mining Applications
  • Extracting Formations From Long Financial Time Series Using Data Mining
  • Financial and Banking Markets and Data Mining Techniques
  • Fraudulent Financial Statements and Detection Through Techniques of Data Mining
  • Harmful Impact Internet and Data Mining Have on Society
  • Informatics, Data Mining, Econometrics, and Financial Economics: A Connection
  • Integrating Data Mining Techniques Into Telemedicine Systems
  • Investigating Tobacco Usage Habits Using Data Mining Approach
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3d face reconstruction using deep learning.

Supervisor: Medeiros de Carvalho, R. (Supervisor 1), Gallucci, A. (Supervisor 2) & Vanschoren, J. (Supervisor 2)

Student thesis : Master

Achieving Long Term Fairness through Curiosity Driven Reinforcement Learning: How intrinsic motivation influences fairness in algorithmic decision making

Supervisor: Pechenizkiy, M. (Supervisor 1), Gajane, P. (Supervisor 2) & Kapodistria, S. (Supervisor 2)

Activity Recognition Using Deep Learning in Videos under Clinical Setting

Supervisor: Duivesteijn, W. (Supervisor 1), Papapetrou, O. (Supervisor 2), Zhang, L. (External person) (External coach) & Vasu, J. D. (External coach)

A Data Cleaning Assistant

Supervisor: Vanschoren, J. (Supervisor 1)

Student thesis : Bachelor

A Data Cleaning Assistant for Machine Learning

A deep learning approach for clustering a multi-class dataset.

Supervisor: Pei, Y. (Supervisor 1), Marczak, M. (External person) (External coach) & Groen, J. (External person) (External coach)

Aerial Imagery Pixel-level Segmentation

A framework for understanding business process remaining time predictions.

Supervisor: Pechenizkiy, M. (Supervisor 1) & Scheepens, R. J. (Supervisor 2)

A Hybrid Model for Pedestrian Motion Prediction

Supervisor: Pechenizkiy, M. (Supervisor 1), Muñoz Sánchez, M. (Supervisor 2), Silvas, E. (External coach) & Smit, R. M. B. (External coach)

Algorithms for center-based trajectory clustering

Supervisor: Buchin, K. (Supervisor 1) & Driemel, A. (Supervisor 2)

Allocation Decision-Making in Service Supply Chain with Deep Reinforcement Learning

Supervisor: Zhang, Y. (Supervisor 1), van Jaarsveld, W. L. (Supervisor 2), Menkovski, V. (Supervisor 2) & Lamghari-Idrissi, D. (Supervisor 2)

Analyzing Policy Gradient approaches towards Rapid Policy Transfer

An empirical study on dynamic curriculum learning in information retrieval.

Supervisor: Fang, M. (Supervisor 1)

An Explainable Approach to Multi-contextual Fake News Detection

Supervisor: Pechenizkiy, M. (Supervisor 1), Pei, Y. (Supervisor 2) & Das, B. (External person) (External coach)

An exploration and evaluation of concept based interpretability methods as a measure of representation quality in neural networks

Supervisor: Menkovski, V. (Supervisor 1) & Stolikj, M. (External coach)

Anomaly detection in image data sets using disentangled representations

Supervisor: Menkovski, V. (Supervisor 1) & Tonnaer, L. M. A. (Supervisor 2)

Anomaly Detection in Polysomnography signals using AI

Supervisor: Pechenizkiy, M. (Supervisor 1), Schwanz Dias, S. (Supervisor 2) & Belur Nagaraj, S. (External person) (External coach)

Anomaly detection in text data using deep generative models

Supervisor: Menkovski, V. (Supervisor 1) & van Ipenburg, W. (External person) (External coach)

Anomaly Detection on Dynamic Graph

Supervisor: Pei, Y. (Supervisor 1), Fang, M. (Supervisor 2) & Monemizadeh, M. (Supervisor 2)

Anomaly Detection on Finite Multivariate Time Series from Semi-Automated Screwing Applications

Supervisor: Pechenizkiy, M. (Supervisor 1) & Schwanz Dias, S. (Supervisor 2)

Anomaly Detection on Multivariate Time Series Using GANs

Supervisor: Pei, Y. (Supervisor 1) & Kruizinga, P. (External person) (External coach)

Anomaly detection on vibration data

Supervisor: Hess, S. (Supervisor 1), Pechenizkiy, M. (Supervisor 2), Yakovets, N. (Supervisor 2) & Uusitalo, J. (External person) (External coach)

Application of P&ID symbol detection and classification for generation of material take-off documents (MTOs)

Supervisor: Pechenizkiy, M. (Supervisor 1), Banotra, R. (External person) (External coach) & Ya-alimadad, M. (External person) (External coach)

Applications of deep generative models to Tokamak Nuclear Fusion

Supervisor: Koelman, J. M. V. A. (Supervisor 1), Menkovski, V. (Supervisor 2), Citrin, J. (Supervisor 2) & van de Plassche, K. L. (External coach)

A Similarity Based Meta-Learning Approach to Building Pipeline Portfolios for Automated Machine Learning

Aspect-based few-shot learning.

Supervisor: Menkovski, V. (Supervisor 1)

Assessing Bias and Fairness in Machine Learning through a Causal Lens

Supervisor: Pechenizkiy, M. (Supervisor 1)

Assessing fairness in anomaly detection: A framework for developing a context-aware fairness tool to assess rule-based models

Supervisor: Pechenizkiy, M. (Supervisor 1), Weerts, H. J. P. (Supervisor 2), van Ipenburg, W. (External person) (External coach) & Veldsink, J. W. (External person) (External coach)

A Study of an Open-Ended Strategy for Learning Complex Locomotion Skills

A systematic determination of metrics for classification tasks in openml, a universally applicable emm framework.

Supervisor: Duivesteijn, W. (Supervisor 1), van Dongen, B. F. (Supervisor 2) & Yakovets, N. (Supervisor 2)

Automated machine learning with gradient boosting and meta-learning

Automated object recognition of solar panels in aerial photographs: a case study in the liander service area.

Supervisor: Pechenizkiy, M. (Supervisor 1), Medeiros de Carvalho, R. (Supervisor 2) & Weelinck, T. (External person) (External coach)

Automatic data cleaning

Automatic scoring of short open-ended questions.

Supervisor: Pechenizkiy, M. (Supervisor 1) & van Gils, S. (External coach)

Automatic Synthesis of Machine Learning Pipelines consisting of Pre-Trained Models for Multimodal Data

Automating string encoding in automl, autoregressive neural networks to model electroencephalograpy signals.

Supervisor: Vanschoren, J. (Supervisor 1), Pfundtner, S. (External person) (External coach) & Radha, M. (External coach)

Balancing Efficiency and Fairness on Ride-Hailing Platforms via Reinforcement Learning

Supervisor: Tavakol, M. (Supervisor 1), Pechenizkiy, M. (Supervisor 2) & Boon, M. A. A. (Supervisor 2)

Benchmarking Audio DeepFake Detection

Better clustering evaluation for the openml evaluation engine.

Supervisor: Vanschoren, J. (Supervisor 1), Gijsbers, P. (Supervisor 2) & Singh, P. (Supervisor 2)

Bi-level pipeline optimization for scalable AutoML

Supervisor: Nobile, M. (Supervisor 1), Vanschoren, J. (Supervisor 1), Medeiros de Carvalho, R. (Supervisor 2) & Bliek, L. (Supervisor 2)

Block-sparse evolutionary training using weight momentum evolution: training methods for hardware efficient sparse neural networks

Supervisor: Mocanu, D. (Supervisor 1), Zhang, Y. (Supervisor 2) & Lowet, D. J. C. (External coach)

Boolean Matrix Factorization and Completion

Supervisor: Peharz, R. (Supervisor 1) & Hess, S. (Supervisor 2)

Bootstrap Hypothesis Tests for Evaluating Subgroup Descriptions in Exceptional Model Mining

Supervisor: Duivesteijn, W. (Supervisor 1) & Schouten, R. M. (Supervisor 2)

Bottom-Up Search: A Distance-Based Search Strategy for Supervised Local Pattern Mining on Multi-Dimensional Target Spaces

Supervisor: Duivesteijn, W. (Supervisor 1), Serebrenik, A. (Supervisor 2) & Kromwijk, T. J. (Supervisor 2)

Bridging the Domain-Gap in Computer Vision Tasks

Supervisor: Mocanu, D. C. (Supervisor 1) & Lowet, D. J. C. (External coach)

CCESO: Auditing AI Fairness By Comparing Counterfactual Explanations of Similar Objects

Supervisor: Pechenizkiy, M. (Supervisor 1) & Hoogland, K. (External person) (External coach)

Clean-Label Poison Attacks on Machine Learning

Supervisor: Michiels, W. P. A. J. (Supervisor 1), Schalij, F. D. (External coach) & Hess, S. (Supervisor 2)

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Technical University of Munich

  • Data Analytics and Machine Learning Group
  • TUM School of Computation, Information and Technology
  • Technical University of Munich

Technical University of Munich

Open Topics

We offer multiple Bachelor/Master theses, Guided Research projects and IDPs in the area of data mining/machine learning. A  non-exhaustive list of open topics is listed below.

If you are interested in a thesis or a guided research project, please send your CV and transcript of records to Prof. Stephan Günnemann via email and we will arrange a meeting to talk about the potential topics.

Robustness of Large Language Models

Type: Master's Thesis

Prerequisites:

  • Strong knowledge in machine learning
  • Very good coding skills
  • Proficiency with Python and deep learning frameworks (TensorFlow or PyTorch)
  • Knowledge about NLP and LLMs

Description:

The success of Large Language Models (LLMs) has precipitated their deployment across a diverse range of applications. With the integration of plugins enhancing their capabilities, it becomes imperative to ensure that the governing rules of these LLMs are foolproof and immune to circumvention. Recent studies have exposed significant vulnerabilities inherent to these models, underlining an urgent need for more rigorous research to fortify their resilience and reliability. A focus in this work will be the understanding of the working mechanisms of these attacks.

We are currently seeking students for the upcoming Summer Semester of 2024, so we welcome prompt applications. This project is in collaboration with  Google Research .

Contact: Tom Wollschläger

References:

  • Universal and Transferable Adversarial Attacks on Aligned Language Models
  • Attacking Large Language Models with Projected Gradient Descent
  • Representation Engineering: A Top-Down Approach to AI Transparency
  • Mechanistically analyzing the effects of fine-tuning on procedurally defined tasks

Generative Models for Drug Discovery

Type:  Mater Thesis / Guided Research

  • Strong machine learning knowledge
  • Proficiency with Python and deep learning frameworks (PyTorch or TensorFlow)
  • Knowledge of graph neural networks (e.g. GCN, MPNN)
  • No formal education in chemistry, physics or biology needed!

Effectively designing molecular geometries is essential to advancing pharmaceutical innovations, a domain which has experienced great attention through the success of generative models. These models promise a more efficient exploration of the vast chemical space and generation of novel compounds with specific properties by leveraging their learned representations, potentially leading to the discovery of molecules with unique properties that would otherwise go undiscovered. Our topics lie at the intersection of generative models like diffusion/flow matching models and graph representation learning, e.g., graph neural networks. The focus of our projects can be model development with an emphasis on downstream tasks ( e.g., diffusion guidance at inference time ) and a better understanding of the limitations of existing models.

Contact :  Johanna Sommer , Leon Hetzel

Equivariant Diffusion for Molecule Generation in 3D

Equivariant Flow Matching with Hybrid Probability Transport for 3D Molecule Generation

Structure-based Drug Design with Equivariant Diffusion Models

Efficient Machine Learning: Pruning, Quantization, Distillation, and More - DAML x Pruna AI

Type: Master's Thesis / Guided Research / Hiwi

The efficiency of machine learning algorithms is commonly evaluated by looking at target performance, speed and memory footprint metrics. Reduce the costs associated to these metrics is of primary importance for real-world applications with limited ressources (e.g. embedded systems, real-time predictions). In this project, you will work in collaboration with the DAML research group and the Pruna AI startup on investigating solutions to improve the efficiency of machine leanring models by looking at multiple techniques like pruning, quantization, distillation, and more.

Contact: Bertrand Charpentier

  • The Efficiency Misnomer
  • A Gradient Flow Framework for Analyzing Network Pruning
  • Distilling the Knowledge in a Neural Network
  • A Survey of Quantization Methods for Efficient Neural Network Inference

Deep Generative Models

Type:  Master Thesis / Guided Research

  • Strong machine learning and probability theory knowledge
  • Knowledge of generative models and their basics (e.g., Normalizing Flows, Diffusion Models, VAE)
  • Optional: Neural ODEs/SDEs, Optimal Transport, Measure Theory

With recent advances, such as Diffusion Models, Transformers, Normalizing Flows, Flow Matching, etc., the field of generative models has gained significant attention in the machine learning and artificial intelligence research community. However, many problems and questions remain open, and the application to complex data domains such as graphs, time series, point processes, and sets is often non-trivial. We are interested in supervising motivated students to explore and extend the capabilities of state-of-the-art generative models for various data domains.

Contact : Marcel Kollovieh , David Lüdke

  • Flow Matching for Generative Modeling
  • Auto-Encoding Variational Bayes
  • Denoising Diffusion Probabilistic Models 
  • Structured Denoising Diffusion Models in Discrete State-Spaces

Graph Structure Learning

Type:  Guided Research / Hiwi

  • Optional: Knowledge of graph theory and mathematical optimization

Graph deep learning is a powerful ML concept that enables the generalisation of successful deep neural architectures to non-Euclidean structured data. Such methods have shown promising results in a vast range of applications spanning the social sciences, biomedicine, particle physics, computer vision, graphics and chemistry. One of the major limitations of most current graph neural network architectures is that they often rely on the assumption that the underlying graph is known and fixed. However, this assumption is not always true, as the graph may be noisy or partially and even completely unknown. In the case of noisy or partially available graphs, it would be useful to jointly learn an optimised graph structure and the corresponding graph representations for the downstream task. On the other hand, when the graph is completely absent, it would be useful to infer it directly from the data. This is particularly interesting in inductive settings where some of the nodes were not present at training time. Furthermore, learning a graph can become an end in itself, as the inferred structure can provide complementary insights with respect to the downstream task. In this project, we aim to investigate solutions and devise new methods to construct an optimal graph structure based on the available (unstructured) data.

Contact : Filippo Guerranti

  • A Survey on Graph Structure Learning: Progress and Opportunities
  • Differentiable Graph Module (DGM) for Graph Convolutional Networks
  • Learning Discrete Structures for Graph Neural Networks

NodeFormer: A Scalable Graph Structure Learning Transformer for Node Classification

A Machine Learning Perspective on Corner Cases in Autonomous Driving Perception  

Type: Master's Thesis 

Industrial partner: BMW 

Prerequisites: 

  • Strong knowledge in machine learning 
  • Knowledge of Semantic Segmentation  
  • Good programming skills 
  • Proficiency with Python and deep learning frameworks (TensorFlow or PyTorch) 

Description: 

In autonomous driving, state-of-the-art deep neural networks are used for perception tasks like for example semantic segmentation. While the environment in datasets is controlled in real world application novel class or unknown disturbances can occur. To provide safe autonomous driving these cased must be identified. 

The objective is to explore novel class segmentation and out of distribution approaches for semantic segmentation in the context of corner cases for autonomous driving. 

Contact: Sebastian Schmidt

References: 

  • Segmenting Known Objects and Unseen Unknowns without Prior Knowledge 
  • Efficient Uncertainty Estimation for Semantic Segmentation in Videos  
  • Natural Posterior Network: Deep Bayesian Uncertainty for Exponential Family  
  • Description of Corner Cases in Automated Driving: Goals and Challenges 

Active Learning for Multi Agent 3D Object Detection 

Type: Master's Thesis  Industrial partner: BMW 

  • Knowledge in Object Detection 
  • Excellent programming skills 

In autonomous driving, state-of-the-art deep neural networks are used for perception tasks like for example 3D object detection. To provide promising results, these networks often require a lot of complex annotation data for training. These annotations are often costly and redundant. Active learning is used to select the most informative samples for annotation and cover a dataset with as less annotated data as possible.   

The objective is to explore active learning approaches for 3D object detection using combined uncertainty and diversity based methods.  

  • Exploring Diversity-based Active Learning for 3D Object Detection in Autonomous Driving   
  • Efficient Uncertainty Estimation for Semantic Segmentation in Videos   
  • KECOR: Kernel Coding Rate Maximization for Active 3D Object Detection
  • Towards Open World Active Learning for 3D Object Detection   

Graph Neural Networks

Type:  Master's thesis / Bachelor's thesis / guided research

  • Knowledge of graph/network theory

Graph neural networks (GNNs) have recently achieved great successes in a wide variety of applications, such as chemistry, reinforcement learning, knowledge graphs, traffic networks, or computer vision. These models leverage graph data by updating node representations based on messages passed between nodes connected by edges, or by transforming node representation using spectral graph properties. These approaches are very effective, but many theoretical aspects of these models remain unclear and there are many possible extensions to improve GNNs and go beyond the nodes' direct neighbors and simple message aggregation.

Contact: Simon Geisler

  • Semi-supervised classification with graph convolutional networks
  • Relational inductive biases, deep learning, and graph networks
  • Diffusion Improves Graph Learning
  • Weisfeiler and leman go neural: Higher-order graph neural networks
  • Reliable Graph Neural Networks via Robust Aggregation

Physics-aware Graph Neural Networks

Type:  Master's thesis / guided research

  • Proficiency with Python and deep learning frameworks (JAX or PyTorch)
  • Knowledge of graph neural networks (e.g. GCN, MPNN, SchNet)
  • Optional: Knowledge of machine learning on molecules and quantum chemistry

Deep learning models, especially graph neural networks (GNNs), have recently achieved great successes in predicting quantum mechanical properties of molecules. There is a vast amount of applications for these models, such as finding the best method of chemical synthesis or selecting candidates for drugs, construction materials, batteries, or solar cells. However, GNNs have only been proposed in recent years and there remain many open questions about how to best represent and leverage quantum mechanical properties and methods.

Contact: Nicholas Gao

  • Directional Message Passing for Molecular Graphs
  • Neural message passing for quantum chemistry
  • Learning to Simulate Complex Physics with Graph Network
  • Ab initio solution of the many-electron Schrödinger equation with deep neural networks
  • Ab-Initio Potential Energy Surfaces by Pairing GNNs with Neural Wave Functions
  • Tensor field networks: Rotation- and translation-equivariant neural networks for 3D point clouds

Robustness Verification for Deep Classifiers

Type: Master's thesis / Guided research

  • Strong machine learning knowledge (at least equivalent to IN2064 plus an advanced course on deep learning)
  • Strong background in mathematical optimization (preferably combined with Machine Learning setting)
  • Proficiency with python and deep learning frameworks (Pytorch or Tensorflow)
  • (Preferred) Knowledge of training techniques to obtain classifiers that are robust against small perturbations in data

Description : Recent work shows that deep classifiers suffer under presence of adversarial examples: misclassified points that are very close to the training samples or even visually indistinguishable from them. This undesired behaviour constraints possibilities of deployment in safety critical scenarios for promising classification methods based on neural nets. Therefore, new training methods should be proposed that promote (or preferably ensure) robust behaviour of the classifier around training samples.

Contact: Aleksei Kuvshinov

References (Background):

  • Intriguing properties of neural networks
  • Explaining and harnessing adversarial examples
  • SoK: Certified Robustness for Deep Neural Networks
  • Certified Adversarial Robustness via Randomized Smoothing
  • Formal guarantees on the robustness of a classifier against adversarial manipulation
  • Towards deep learning models resistant to adversarial attacks
  • Provable defenses against adversarial examples via the convex outer adversarial polytope
  • Certified defenses against adversarial examples
  • Lipschitz-margin training: Scalable certification of perturbation invariance for deep neural networks

Uncertainty Estimation in Deep Learning

Type: Master's Thesis / Guided Research

  • Strong knowledge in probability theory

Safe prediction is a key feature in many intelligent systems. Classically, Machine Learning models compute output predictions regardless of the underlying uncertainty of the encountered situations. In contrast, aleatoric and epistemic uncertainty bring knowledge about undecidable and uncommon situations. The uncertainty view can be a substantial help to detect and explain unsafe predictions, and therefore make ML systems more robust. The goal of this project is to improve the uncertainty estimation in ML models in various types of task.

Contact: Tom Wollschläger ,   Dominik Fuchsgruber ,   Bertrand Charpentier

  • Can You Trust Your Model’s Uncertainty? Evaluating Predictive Uncertainty Under Dataset Shift
  • Predictive Uncertainty Estimation via Prior Networks
  • Posterior Network: Uncertainty Estimation without OOD samples via Density-based Pseudo-Counts
  • Evidential Deep Learning to Quantify Classification Uncertainty
  • Weight Uncertainty in Neural Networks

Hierarchies in Deep Learning

Type:  Master's Thesis / Guided Research

Multi-scale structures are ubiquitous in real life datasets. As an example, phylogenetic nomenclature naturally reveals a hierarchical classification of species based on their historical evolutions. Learning multi-scale structures can help to exhibit natural and meaningful organizations in the data and also to obtain compact data representation. The goal of this project is to leverage multi-scale structures to improve speed, performances and understanding of Deep Learning models.

Contact: Marcel Kollovieh , Bertrand Charpentier

  • Tree Sampling Divergence: An Information-Theoretic Metricfor Hierarchical Graph Clustering
  • Hierarchical Graph Representation Learning with Differentiable Pooling
  • Gradient-based Hierarchical Clustering
  • Gradient-based Hierarchical Clustering using Continuous Representations of Trees in Hyperbolic Space
  • Bibliography
  • More Referencing guides Blog Automated transliteration Relevant bibliographies by topics
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  • Relevant bibliographies by topics
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Dissertations / Theses on the topic 'Data mining – Research'

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Shioda, Romy 1977. "Integer optimization in data mining." Thesis, Massachusetts Institute of Technology, 2003. http://hdl.handle.net/1721.1/17579.

Zhang, Ya Klein Cerry M. "Association rule mining in cooperative research." Diss., Columbia, Mo. : University of Missouri--Columbia, 2009. http://hdl.handle.net/10355/6540.

Kardell, Oliver [Verfasser]. "DIA data mining in colorectal cancer research / Oliver Kardell." Hamburg : Staats- und Universitätsbibliothek Hamburg Carl von Ossietzky, 2020. http://d-nb.info/1223621022/34.

Fang, Yao-chuen. "Scientific research impact and data mining applications in hydrogeology." Connect to this title online, 2004. http://rave.ohiolink.edu/etdc/view?acc%5Fnum=osu1092774125.

Shao, Huijuan. "Temporal Mining Approaches for Smart Buildings Research." Diss., Virginia Tech, 2017. http://hdl.handle.net/10919/84349.

Geltz, Rebecca L. "Using Data Mining to Model Student Success." Youngstown State University / OhioLINK, 2009. http://rave.ohiolink.edu/etdc/view?acc_num=ysu1264697709.

Flietstra, Bryan C. "A data mining approach for acoustic diagnosis of cardiopulmonary disease." Thesis, Massachusetts Institute of Technology, 2008. http://hdl.handle.net/1721.1/45400.

Lavelle, Stephen J. "Fabricating synthetic data in support of training for domestic terrorist activity data mining research." Thesis, Monterey, California. Naval Postgraduate School, 2010. http://hdl.handle.net/10945/5196.

Snyder, Ashley M. (Ashley Marie). "Data mining and visualization : real time predictions and pattern discovery in hospital emergency rooms and immigration data." Thesis, Massachusetts Institute of Technology, 2010. http://hdl.handle.net/1721.1/61199.

Knoetze, Ronald Morgan. "The mining and visualisation of application services data." Thesis, Nelson Mandela Metropolitan University, 2005. http://hdl.handle.net/10948/451.

Houston, Andrea L., Hsinchun Chen, Susan M. Hubbard, Bruce R. Schatz, Tobun Dorbin Ng, Robin R. Sewell, and Kristin M. Tolle. "Medical Data Mining on the Internet: Research on a Cancer Information System." Kluwer, 1999. http://hdl.handle.net/10150/106388.

Wu, Qionglin 1964. "Data mining and knowledge discovery in financial research : empirical investigations into currency." Thesis, McGill University, 2001. http://digitool.Library.McGill.CA:80/R/?func=dbin-jump-full&object_id=31560.

Burley, Keith Martin. "Data mining techniques in higher education research : the example of student retention." Thesis, Sheffield Hallam University, 2006. http://shura.shu.ac.uk/19412/.

Yuan, Fan. "Modeling and computational strategies for medical decision making." Diss., Georgia Institute of Technology, 2015. http://hdl.handle.net/1853/54857.

Liu, Yang. "Data mining methods for single nucleotide polymorphisms analysis in computational biology." HKBU Institutional Repository, 2011. http://repository.hkbu.edu.hk/etd_ra/1287.

Gadaleta, Emanuela. "A multidisciplinary computational approach to model cancer-omics data : organising, integrating and mining multiple sources of data." Thesis, Queen Mary, University of London, 2015. http://qmro.qmul.ac.uk/xmlui/handle/123456789/8141.

Domm, Maryanne. "Mathematical programming in data mining: Models for binary classification with application to collusion detection in online gambling." Diss., The University of Arizona, 2003. http://hdl.handle.net/10150/280270.

Pafilis, Evangelos. "Web-based named entity recognition and data integration to accelerate molecular biology research." [S.l. : s.n.], 2008. http://nbn-resolving.de/urn:nbn:de:bsz:16-opus-89706.

Kamenieva, Iryna. "Research Ontology Data Models for Data and Metadata Exchange Repository." Thesis, Växjö University, School of Mathematics and Systems Engineering, 2009. http://urn.kb.se/resolve?urn=urn:nbn:se:vxu:diva-6351.

For researches in the field of the data mining and machine learning the necessary condition is an availability of various input data set. Now researchers create the databases of such sets. Examples of the following systems are: The UCI Machine Learning Repository, Data Envelopment Analysis Dataset Repository, XMLData Repository, Frequent Itemset Mining Dataset Repository. Along with above specified statistical repositories, the whole pleiad from simple filestores to specialized repositories can be used by researchers during solution of applied tasks, researches of own algorithms and scientific problems. It would seem, a single complexity for the user will be search and direct understanding of structure of so separated storages of the information. However detailed research of such repositories leads us to comprehension of deeper problems existing in usage of data. In particular a complete mismatch and rigidity of data files structure with SDMX - Statistical Data and Metadata Exchange - standard and structure used by many European organizations, impossibility of preliminary data origination to the concrete applied task, lack of data usage history for those or other scientific and applied tasks.

Now there are lots of methods of data miming, as well as quantities of data stored in various repositories. In repositories there are no methods of DM (data miming) and moreover, methods are not linked to application areas. An essential problem is subject domain link (problem domain), methods of DM and datasets for an appropriate method. Therefore in this work we consider the building problem of ontological models of DM methods, interaction description of methods of data corresponding to them from repositories and intelligent agents allowing the statistical repository user to choose the appropriate method and data corresponding to the solved task. In this work the system structure is offered, the intelligent search agent on ontological model of DM methods considering the personal inquiries of the user is realized.

For implementation of an intelligent data and metadata exchange repository the agent oriented approach has been selected. The model uses the service oriented architecture. Here is used the cross platform programming language Java, multi-agent platform Jadex, database server Oracle Spatial 10g, and also the development environment for ontological models - Protégé Version 3.4.

Chiang, H.-Y., and 蔣筱雲. "A Research of Compensating Missing Data by Data Mining." Thesis, 2006. http://ndltd.ncl.edu.tw/handle/42484926395418255313.

Chou-ChengChen and 陳疇丞. "Application of text mining and data mining in cancer research." Thesis, 2017. http://ndltd.ncl.edu.tw/handle/5m9x87.

Cahng, Feng-Hao, and 張峰豪. "Research on machine utilization using data mining." Thesis, 2016. http://ndltd.ncl.edu.tw/handle/9w95bv.

Waranashiwar, Shruti Dilip. "Interactive pattern mining of neuroscience data." Thesis, 2014. http://hdl.handle.net/1805/3878.

Liu, Ying-Ching, and 劉應慶. "The Initial Research of Using Data Mining Techniques for Data Classification Optimization." Thesis, 2003. http://ndltd.ncl.edu.tw/handle/07565943030329965805.

Wen, Hao Liao, and 廖文豪. "The Research of Value Analysis Applying Data Mining Technique." Thesis, 2003. http://ndltd.ncl.edu.tw/handle/10327866038049761206.

Tai, Chuntien, and 戴俊典. "A Research of Data Mining in Warfarin Dosage Decisions." Thesis, 2011. http://ndltd.ncl.edu.tw/handle/12554411984456215497.

Wang, Dung-Chi, and 王東祈. "A Research on Mining Frequent Itemsets in Data Stream." Thesis, 2007. http://ndltd.ncl.edu.tw/handle/4vne38.

LEE, YUN-FANG, and 李雲芳. "Research on Functional Clothing Recommendations by Using Data Mining." Thesis, 2018. http://ndltd.ncl.edu.tw/handle/ymwg3a.

Song, Zi-kong, and 宋子康. "A research on mining association rules in data stream." Thesis, 2006. http://ndltd.ncl.edu.tw/handle/sx7u24.

Tsai, Yi-Ting, and 蔡依庭. "Application of Data Mining Techniques to Film Market Research." Thesis, 2010. http://ndltd.ncl.edu.tw/handle/16605744340914078907.

Lin, Shih-Hau, and 林施豪. "Data Mining in Bioinformatic Contents Research - with Biological Genetic Database." Thesis, 2003. http://ndltd.ncl.edu.tw/handle/50107356145725150045.

Lin, De-Fong, and 林德豐. "Applying Data Mining Technology in Network Behavior Anomaly Performance Research." Thesis, 2012. http://ndltd.ncl.edu.tw/handle/22513426476489517747.

ISUN, WU YI, and 吳毅尊. "Research of Agent Technology on Data Mining of Enterprise's Knowledge." Thesis, 2005. http://ndltd.ncl.edu.tw/handle/15491769030768636621.

Wu, Tzu-Cheng, and 吳自晟. "The Research of Data Mining Techniques applied to Insurance CRM." Thesis, 2007. http://ndltd.ncl.edu.tw/handle/3362mt.

Chiu, Jheng-Ci, and 邱政琦. "Research on the Predictions of Fire Incidents with Data Mining." Thesis, 2016. http://ndltd.ncl.edu.tw/handle/23dkp7.

Wu, Yen-Lin, and 吳彥霖. "A Research of Using Data Mining Techniques in Retrieving Researchers." Thesis, 2009. http://ndltd.ncl.edu.tw/handle/why3sw.

Hung, Pin-Kai, and 洪斌凱. "Using data mining methodology to research C company accessory market." Thesis, 2010. http://ndltd.ncl.edu.tw/handle/25149984457867750574.

SU, YUNG-HSIANG, and 蘇詠翔. "Data Mining Methods for the Research of E-stock Transaction." Thesis, 2002. http://ndltd.ncl.edu.tw/handle/68222088478818233241.

YU, LI-HSUAN, and 余立宣. "Research on the Repairing Information Technology Devices Using Data Mining." Thesis, 2015. http://ndltd.ncl.edu.tw/handle/76957267545832294507.

Hsieh, Ju-Cheng, and 謝儒誠. "Research of using data mining technique for automatic documents clustering." Thesis, 2002. http://ndltd.ncl.edu.tw/handle/u47m93.

Chang, Yu-Jen, and 張于仁. "Apply Data Mining Integrated with Hierarchical Learning Architecture in the Research of Data Classification." Thesis, 2011. http://ndltd.ncl.edu.tw/handle/34876736036020662364.

Wu, Tai-Long, and 吳台隆. "A Research of Taiwan’s Vessel Smuggling Analysis-Applied Data-Mining Technique." Thesis, 2010. http://ndltd.ncl.edu.tw/handle/92259244989853093179.

Chang, Yung-Ku, and 張永固. "Data Mining on Target Marketing Research: An Example of Telecommunication Users." Thesis, 2002. http://ndltd.ncl.edu.tw/handle/97687487797728422391.

Huang, Ya-Fang, and 黃雅芳. "Using Data Mining to Assess the Research of Coronary Artery Disease." Thesis, 2009. http://ndltd.ncl.edu.tw/handle/99992822280891583455.

WANG, CHEN YUNG, and 陳永旺. "Apply data mining technology in the index fund investment strategy research." Thesis, 2009. http://ndltd.ncl.edu.tw/handle/66307548507508554222.

Liao, Ko-Hsuan, and 廖克軒. "Campus Electricity Meter Data Mining and Application of Visualisation Initial Research." Thesis, 2018. http://ndltd.ncl.edu.tw/handle/v9scpf.

Wang, Hsi-Chin, and 王璽欽. "The Research of Using Data Mining Technology in The Patent Analysis." Thesis, 2007. http://ndltd.ncl.edu.tw/handle/dz4g92.

Madsen, Jacob Hastrup. "Outlier detection for improved clustering : empirical research for unsupervised data mining." Master's thesis, 2018. http://hdl.handle.net/10362/34464.

Bonates, Tiberius. "Optimization in logical analysis of data." 2007. http://hdl.rutgers.edu/1782.2/rucore10001600001.ETD.15788.

Lin, Tinghao, and 林鼎浩. "Research on Constructing a Data Mining Framework for Semiconductor Manufacturing Data and the Empirical Study." Thesis, 2000. http://ndltd.ncl.edu.tw/handle/00819160195077260729.

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Latest Thesis Topics in Data Mining

Data mining is an approach for spotting anomalies in huge amounts of data. The legal data contains the specifics of ...

thesis on data mining

Data mining is an approach for spotting anomalies in huge amounts of data. The legal data contains the specifics of the crime. Data mining could be used to find patterns and themes in an attempt to forecast what will happen in the future. Machine learning and deep learning techniques and implementations, like web page recommender systems and programmable technology, are built using data mining. Through this article, we have provided an ultimate view on developing any thesis topics in data mining efficiently. We shall first start with an introduction to data mining

INTRODUCTION OF DATA MINING

We require data mining to extract relevant insights from the imbalanced and noisy datasets, which is done in a stage-wise process procedure as follows:

  • First discard inconsistencies in data
  • Then uncover patterns related to the analysis work
  • Then translate data into KDD-friendly formats
  • Ultimately visualize accumulated data for the user.

In a nutshell, data mining is the process of examining enormous amounts of data autonomously for regularities that go far beyond basic comparison. To separate the data and determine the likelihood of an event, data mining employs simple computational models in the form of algorithms. After all, one must remember that Knowledge Discovery in Data Mining is another name for data mining (KDD).

The following are the major characteristics of data mining

  • Predictions related to expected results.
  • Automatic pattern finding
  • Concentrate on big data sets, databases, and systems.
  • The generation of actionable and performable insights

Data mining could provide answers to queries that are not easily answered using traditional search and methodologies of reporting. To be more specific, Data Mining allows users to traverse database and data warehouse architectures, data models, and database systems, assess mining trends, and visualize them in various ways. To understand the advantages of data mining you need to have a better idea of the major processes and steps involved in it.

What are the steps in the data mining process?

  • The topic has to be thoroughly understood and work has to be performed accordingly
  • Value select the data set you have to be very careful about its quality
  • Extracting beneficial and relevant data is the major aim of choosing any data set
  • You need to prepare and process the data after extracting it
  • Data modeling and remodelling based on the user requirement is the fourth step
  • Understanding all data aspects are very important for analyzing the presence of leakage and fault in the data processing
  • As the evaluation is completed data can be used for analyzing and other purposes

In all these steps, data mining standards, algorithms, and models play a very significant role. You can get complete informative and analytical support from our technical experts’ team at any time regarding your data mining thesis. You can always feel free to contact us for any kind of support for your thesis topics in data mining. What are the four major stages of the data mining process? Chronologically the stages of data mining include the following

  • Collection of data
  • Dimensionality reduction (PCA and SVD)
  • Measurement of distance
  • Prediction (data classification – ANN, SVM, KNN, Rules, Decision Trees and Bayesian networks)
  • Clustering (hierarchical, density, k means, and message passing)
  • Association rule mining
  • Data interpretation

Since our experts have more than two decades of experience in data mining research, you can surely get all your queries resolved with our support. The customized research supports that we provide include practical explanations and demonstrations with complete technical notes and descriptions. We ensure to render confidential research and thesis writing support for all thesis topics in data mining. Get in touch with us for reliable and high-quality data mining research guidance. Let us now talk about the skills and qualifications needed for the successful implementation of data mining projects

What kind of skills are required for a data mining project?

  • Analysing data to provide supportive points to both true and false facts
  • Since the process of data evolution seems to be a slow process, human data analysis skills remain the same, provided that all the other factors are constant
  • Deployment of faster hardware which includes even the Quantum computing
  • The skill to analyze huge amount of data which are collected autonomously is very important
  • Betterment and accessibility of open source software is also required for better data analysis and mining

With the help of our technical experts, qualified engineers, and experienced data analysts, you can surely develop and establish all the above-required skills effectively. The standard books and benchmark references that we provide can enable you to choose the best thesis topics in data mining. In this regard let us have a look into the major and recent data mining thesis topics below 

  • It is a method of designing manufacturing techniques ahead of time, determining the extraction path of every single item component or assemblage, and arranging, beginning, and ending for each important basis and setup.
  • As a result, we could have balanced storage of resources and stable manufacturing utilizing data mining tools.
  • Internet platforms have varying and data set conceptual frameworks for managing depth of subject knowledge and associated data sets
  • These datasets contain the same parameters and phenomena that occur in many records, enabling prior records to also be built on different data sets.
  • Instead of analyses and collections that hinder anyone else from developing on top of the completed project, investigations must be supplied as original data in a consistent format using matlab simulation .
  • Scalable visualization as well as modeling platforms that enable the user to filter and modify data, explore hypotheses, provide findings, and reduce the time taken to convert records into a version that can be published.
  • One might take the knowledge through prior experiments or test cases and use it to operate more effectively through data mining methods.
  • We can reduce the number of errors by referring to previous missteps and applying what we’ve learned to get good outcomes.
  • Researchers can identify fraudsters by using a bigdata mapreduce approach 
  • It is primarily done by collecting even more relevant data about a particular architecture in the way of knowing and then analyzing them to see if they are legitimate or not.

Currently, we are offering thesis writing guidance with proper grammatical checks, internal review, and multiple revisions. So you can completely depend on us for your data mining thesis. Altogether, a master’s thesis presents study evidence to validate a graduate pupil’s research and technical requirements for a credential. Although some graduates provide non-thesis master’s degree options, the thesis seems to be the standard capstone requirement for many here. So now you understand what a thesis is, you can determine if it’s a good alternative for your profession or if a detailed assessment is a preferred idea.

How long is a thesis for a master’s?

  • The master’s thesis can range anywhere between one hundred and three hundred pages long, not counting the bibliography.
  • The quantity will be determined by several criteria, which include the topic and research approach.
  • There is no such thing as a “proper” length of the page
  • Rather, the thesis ought to be sufficient enough to clearly and concisely present all important facts.

This tendency, we anticipate, would facilitate and encourage people to invest additional time refining insights rather than gathering, purifying, and otherwise organizing the data that they require. For any further clarifications related to thesis topics in data mining, we insist you check out our website or directly get in touch with us. Our experts are always happy to support you.

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Home > Statler College of Engineering and Mineral Resources > MININGENG > Mining Engineering Graduate Theses and Dissertations

Mining Engineering Graduate Theses and Dissertations

Theses/dissertations from 2023 2023.

Development of A Hydrometallurgical Process for the Extraction of Cobalt, Manganese, and Nickel from Acid Mine Drainage Treatment Byproduct , Alejandro Agudelo Mira

Selective Recovery of Rare Earth Elements from Acid Mine Drainage Treatment Byproduct , Zeynep Cicek

Identification of Rockmass Deformation and Lithological Changes in Underground Mines by Using Slam-Based Lidar Technology , Francisco Eduardo Gil Hurtado

Analysis of the Brittle Failure Mechanism of Underground Stone Mine Pillars by Implementing Numerical Modeling in FLAC3D , Rosbel Jimenez

Analysis of the root causes of fatal injuries in the United States surface mines between 2008 and 2021. , Maria Fernanda Quintero

AUGMENTED REALITY AND MOBILE SYSTEMS FOR HEAVY EQUIPMENT OPERATORS IN SURFACE MINING , Juan David Valencia Quiceno

Theses/Dissertations from 2022 2022

Integrated Large Discontinuity Factor, Lamodel and Stability Mapping Approach for Stone Mine Pillar Stability , Mustafa Baris Ates

Noise Exposure Trends Among Violating Coal Mines, 2000 to 2021 , Hanna Grace Davis

Calcite depression in bastnaesite-calcite flotation system using organic acids , Emmy Muhoza

Investigation of Geomechanical Behavior of Laminated Rock Mass Through Experimental and Numerical Approach , Qingwen Shi

Static Liquefaction in Tailing Dams , Jose Raul Zela Concha

Experimental and Theoretical Investigation on the Initiation Mechanism of Low-Rank Coal's Self-Heating Process , Yinan Zhang

Development of an Entry-Scale Modeling Methodology to Provide Ground Reaction Curves for Longwall Gateroad Support Evaluation , Haochen Zhao

Size effect and anisotropy on the strength of shale under compressive stress conditions , Yun Zhao

Theses/Dissertations from 2021 2021

Evaluation of LIDAR systems for rock mass discontinuity identification in underground stone mines from 3D point cloud data , Mario Alejandro Bendezu de la Cruz

Implementing the Empirical Stone Mine Pillar Strength Equation into the Boundary Element Method Software LaModel , Samuel Escobar

Recovery of Phosphorus from Florida Phosphatic Waste Clay , Amir Eskanlou

Optimization of Operating Conditions and Design Parameters on Coal Ultra-Fine Grinding Through Kinetic Stirred Mill Tests and Numerical Modeling , Francisco Patino

The Effect of Natural Fractures on the Mechanical Behavior of Limestone Pillars: A Synthetic Rock Mass Approach Application , Mustafa Can Süner

Evaluation of Various Separation Techniques for the Removal of Actinides from A Rare Earth-Containing Solution Generated from Coarse Coal Refuse , Deniz Talan

Geology Oriented Loading Approach for Underground Coal Mines , Deniz Tuncay

Various Operational Aspects of the Extraction of Critical Minerals from Acid Mine Drainage and Its Treatment By-product , Zhongqing Xiao

Theses/Dissertations from 2020 2020

Adaptation of Coal Mine Floor Rating (CMFR) to Eastern U.S. Coal Mines , Sena Cicek

Upstream Tailings Dam - Liquefaction , Mladen Dragic

Development, Analysis and Case Studies of Impact Resistant Steel Sets for Underground Roof Fall Rehabilitation , Dakota D. Faulkner

The influence of spatial variance on rock strength and mechanism of failure , Danqing Gao

Fundamental Studies on the Recovery of Rare Earth Elements from Acid Mine Drainage , Xue Huang

Rational drilling control parameters to reduce respirable dust during roof bolting operations , Hua Jiang

Solutions to Some Mine Subsidence Research Challenges , Jian Yang

An Interactive Mobile Equipment Task-Training with Virtual Reality , Lazar Zujovic

Theses/Dissertations from 2019 2019

Fundamental Mechanism of Time Dependent Failure in Shale , Neel Gupta

A Critical Assessment on the Resources and Extraction of Rare Earth Elements from Acid Mine Drainage , Christopher R. Vass

Time-dependent deformation and associated failure of roof in underground mines , Yuting Xue

Theses/Dissertations from 2018 2018

Parametric Study of Coal Liberation Behavior Using Silica Grinding Media , Adewale Wasiu Adeniji

Three-dimensional Numerical Modeling Encompassing the Stability of a Vertical Gas Well Subjected to Longwall Mining Operation - A Case Study , Bonaventura Alves Mangu Bali

Shale Characterization and Size-effect study using Scanning Electron Microscopy and X-Ray Diffraction , Debashis Das

Behaviour Of Laminated Roof Under High Horizontal Stress , Prasoon Garg

Theses/Dissertations from 2017 2017

Optimization of Mineral Processing Circuit Design under Uncertainty , Seyed Hassan Amini

Evaluation of Ultrasonic Velocity Tests to Characterize Extraterrestrial Rock Masses , Thomas W. Edge II

A Photogrammetry Program for Physical Modeling of Subsurface Subsidence Process , Yujia Lian

An Area-Based Calculation of the Analysis of Roof Bolt Systems (ARBS) , Aanand Nandula

Developing and implementing new algorithms into the LaModel program for numerical analysis of multiple seam interactions , Mehdi Rajaeebaygi

Adapting Roof Support Methods for Anchoring Satellites on Asteroids , Grant B. Speer

Simulation of Venturi Tube Design for Column Flotation Using Computational Fluid Dynamics , Wan Wang

Theses/Dissertations from 2016 2016

Critical Analysis of Longwall Ventilation Systems and Removal of Methane , Robert B. Krog

Implementing the Local Mine Stiffness Calculation in LaModel , Kaifang Li

Development of Emission Factors (EFs) Model for Coal Train Loading Operations , Bisleshana Brahma Prakash

Nondestructive Methods to Characterize Rock Mechanical Properties at Low-Temperature: Applications for Asteroid Capture Technologies , Kara A. Savage

Mineral Asset Valuation Under Economic Uncertainty: A Complex System for Operational Flexibility , Marcell B. B. Silveira

A Feasibility Study for the Automated Monitoring and Control of Mine Water Discharges , Christopher R. Vass

Spontaneous Combustion of South American Coal , Brunno C. C. Vieira

Calibrating LaModel for Subsidence , Jian Yang

Theses/Dissertations from 2015 2015

Coal Quality Management Model for a Dome Storage (DS-CQMM) , Manuel Alejandro Badani Prado

Design Programs for Highwall Mining Operations , Ming Fan

Development of Drilling Control Technology to Reduce Drilling Noise during Roof Bolting Operations , Mingming Li

The Online LaModel User's & Training Manual Development & Testing , Christopher R. Newman

How to mitigate coal mine bumps through understanding the violent failure of coal specimens , Gamal Rashed

Theses/Dissertations from 2014 2014

Effect of biaxial and triaxial stresses on coal mine shale rocks , Shrey Arora

Stability Analysis of Bleeder Entries in Underground Coal Mines Using the Displacement-Discontinuity and Finite-Difference Programs , Xu Tang

Experimental and Theoretical Studies of Kinetics and Quality Parameters to Determine Spontaneous Combustion Propensity of U.S. Coals , Xinyang Wang

Bubble Size Effects in Coal Flotation and Phosphate Reverse Flotation using a Pico-nano Bubble Generator , Yu Xiong

Integrating the LaModel and ARMPS Programs (ARMPS-LAM) , Peng Zhang

Theses/Dissertations from 2013 2013

Column Flotation of Subbituminous Coal Using the Blend of Trimethyl Pentanediol Derivatives and Pico-Nano Bubbles , Jinxiang Chen

Applications of Surface and Subsurface Subsidence Theories to Solve Ground Control Problems , Biao Qiu

Calibrating the LaModel Program for Shallow Cover Multiple-Seam Mines , Morgan M. Sears

The Integration of a Coal Mine Emergency Communication Network into Pre-Mine Planning and Development , Mark F. Sindelar

Factors considered for increasing longwall panel width , Jack D. Trackemas

An experimental investigation of the creep behavior of an underground coalmine roof with shale formation , Priyesh Verma

Evaluation of Rope Shovel Operators in Surface Coal Mining Using a Multi-Attribute Decision-Making Model , Ivana M. Vukotic

Theses/Dissertations from 2012 2012

Calculating the Surface Seismic Signal from a Trapped Miner , Adeniyi A. Adebisi

Comprehensive and Integrated Model for Atmospheric Status in Sealed Underground Mine Areas , Jianwei Cheng

Production and Cost Assessment of a Potential Application of Surface Miners in Coal Mining in West Virginia , Timothy A. Nolan

The Integration of Geomorphic Design into West Virginia Surface Mine Reclamation , Alison E. Sears

Truck Cycle and Delay Automated Data Collection System (TCD-ADCS) for Surface Coal Mining , Patricio G. Terrazas Prado

New Abutment Angle Concept for Underground Coal Mining , Ihsan Berk Tulu

Theses/Dissertations from 2011 2011

Experimental analysis of the post-failure behavior of coal and rock under laboratory compression tests , Dachao Neil Nie

The influence of interface friction and w/h ratio on the violence of coal specimen failure , Simon H. Prassetyo

Theses/Dissertations from 2010 2010

A risk management approach to pillar extraction in the Central Appalachian coalfields , Patrick R. Bucks

The Impacts of Longwall Mining on Groundwater Systems -- A Case of Cumberland Mine Panels B5 and B6 , Xinzhi Du

Evaluation of ultrafine spiral concentrators for coal cleaning , Meng Yang

Theses/Dissertations from 2009 2009

Development of a coal reserve GIS model and estimation of the recoverability and extraction costs , Chandrakanth Reddy Apala

Application and evaluation of spiral separators for fine coal cleaning , Zhuping Che

Weak floor stability in the Illinois Basin underground coal mines , Murali M. Gadde

Design of reinforced concrete seals for underground coal mines , Rajagopala Reddy Kallu

Employing laboratory physical modeling to study the radio imaging method (RIM) , Jun Lu

Influence of cutting sequence and time effects on cutters and roof falls in underground coal mine -- numerical approach , Anil Kumar Ray

Implementing energy release rate calculations into the LaModel program , Morgan M. Sears

Modeling PDC cutter rock interaction , Ihsan Berk Tulu

Analytical determination of strain energy for the studies of coal mine bumps , Qiang Xu

Improvement of the mine fire simulation program MFIRE , Lihong Zhou

Theses/Dissertations from 2008 2008

Program-assisted analysis of the transverse pressure capacity of block stoppings for mine ventilation control , Timothy J. Batchler

Analysis of factors affecting wireless communication systems in underground coal mines , David P. McGraw

Analysis of underground coal mine refuge shelters , Mickey D. Mitchell

Theses/Dissertations from 2007 2007

Dolomite flotation of high magnesium phosphate ores using fatty acid soap collectors , Zhengxing Gu

Evaluation of longwall face support hydraulic supply systems , Ted M. Klemetti II

Experimental studies of electromagnetic signals to enhance radio imaging method (RIM) , William D. Monaghan

Analysis of water monitoring data for longwall panels , Joseph R. Zirkle

Theses/Dissertations from 2006 2006

Measurements of the electrical properties of coal measure rocks , Nikolay D. Boykov

Geomechanical and weathering properties of weak roof shales in coal mines , Hakan Gurgenli

Assessment and evaluation of noise controls on roof bolting equipment and a method for predicting sound pressure levels in underground coal mining , Rudy J. Matetic

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  • PhD Thesis on Data Mining

PhD Thesis on Data Mining is a platform to succeed in your thesis in a good way. In view of data mining, let’s first check the meaning of it shortly,  “Data mining is the step to discover the data-centric patterns in a large database.”

Today, it is a peak domain in the ML, DL, and AI!!!

Due to taking part in these concepts, data mining is the  most number-one  domain.  During that time comes to the thesis writing, your study must add with the sound of arguments establish the fact.

When it comes to thesis writing, your research must contribute with reasonable proofs to the research community. In order to safeguard your research in this stage, PhD Thesis on Data Mining simplified thesis writing with our brilliant writers.

In order to this stage, PhD Thesis on Data Mining is an easy step for your thesis writing.  When our thesis writing, you are studying must add with the soundproofs. Now a day, it is a high research field in the ML, DL, SL, DS/DL, and AI!!!

Simple steps for powerful PhD Thesis on Data Mining

  • First, share your cravings and requirements with us
  • Text mining
  • Multimedia mining
  • Graph mining etc.
  • University rules
  • The time limit for your thesis
  • Your past research works
  • Then, assign with a technical writer
  • Another, receive the structure
  • After approval, your thesis starts writing
  • As you get the first draft of your thesis

Our major goal line of the data mining thesis project is to extract apt knowledge from more complex mixed data sets. For that, we will perform the following practices on raw data sets. It may vary according to your requirements . If you have any queries/revision, then clarify it with our writer.

DISCERN OUR PROCESSING APPROACH IN DATA MINING

  • Data preprocessing
  • Missing values filling
  • Noisy data cleaning
  • Normalization
  • Aggregation
  • Discretization
  • Hierarchy generation
  • Generalization
  • Cube aggregation
  • Compression data
  • Dimensionality reduction
  • Optimal attribute subset selection
  • Mutual information
  • Optimization algorithms
  • Whale optimization
  • Spider Monkey Optimization
  • Ant lion colony optimization
  • Data analysis
  • Transitive heuristic algorithm
  • Expectation-Maximization
  • Fuzzy clustering
  • ML (ANN, as well as Decision trees, SVM, and PCA)
  • DL techniques (such as DNN, CNN, LSTM, and DBN)
  • Least square regression
  • Logistic regression
  • Lasso regression
  • Multivariate regression
  • Multiple regression

For the current students, thesis writing in a preferred format is a tough task. Same, we will think wisely while writing your thesis. Probably, a helpful friend will keep at the heart.

Use our PhD thesis on data mining like your friend to save your time and money. In addition, your stress will remove 100% at the PhD journey’s end.  Almost, we will double-check with the proofread research team!!!

Our research areas of data mining

  • Sentiment analysis
  • Social network analysis
  • Frequent item-set mining
  • Anomaly detection
  • Recommender systems
  • Semantic web mining
  • Mining using AI
  • Bio-medical diagnosis
  • Query search systems

Our competence tools for your data mining research

  • Rapid Miner
  • R-programming

To conclude our PhD thesis on data mining. Stay within our success zone. We will achieve great things in your research…

MILESTONE 1: Research Proposal

Finalize journal (indexing).

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MILESTONE 2: System Development

Fix implementation plan.

We prepare a clear project implementation plan that narrates your proposal in step-by step and it contains Software and OS specification. We recommend you very suitable tools/software that fit for your concept.

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A Trove of ByteDance Records Mistakenly Went Public. Here’s What They Say.

The records briefly surfaced in a lawsuit involving the Republican megadonor Jeff Yass’s firm.

A woman with a colorful handbag enters a glass door etched with the word ByteDance.

By Mara Hvistendahl

Mara Hvistendahl is an investigative reporter focusing on Asia.

Somehow, thousands of pages of sealed court documents relating to the birth of TikTok’s owner, ByteDance , were mistakenly released by a Pennsylvania court. Before they were made secret again, I read them.

The documents — emails, chat transcripts and memos — are a fascinating window into ByteDance’s origins. They show that Susquehanna International Group, the trading firm of the Republican megadonor Jeff Yass, played a bigger role in the company than previously known.

They also tell a new version of the ByteDance origin story, one with fits and starts on the way to becoming one of the world’s most highly valued start-ups.

ByteDance grew out of a Chinese real estate site.

The ByteDance origin story, as we know it, has the ring of Silicon Valley lore. As the story goes, the company’s founder, Zhang Yiming, sketched out the idea on a napkin for an employee of a Susquehanna subsidiary in 2012.

The pitch was so impressive that Susquehanna jumped onboard.

In actuality, the records show, the story begins in earnest years earlier. Susquehanna’s Chinese subsidiary handpicked Mr. Zhang in 2009 to run a real estate start-up called 99Fang. The company had good search technology that was supposed to match buyers with their perfect properties.

The company ultimately fizzled, and in 2012, Mr. Zhang wrote in an email that he was bored with real estate. He and Susquehanna stayed in contact as he developed the idea for ByteDance, which he called a “brother enterprise” to the real estate company.

Instead of matching buyers with homes, he proposed matching users with blooper videos and lifestyle content.

While still at 99Fang, the documents show, Mr. Zhang created two prototype apps: Funny Pictures and Pretty Babes. They were a hit.

ByteDance was originally called Xiangping.

An early investment memo describes plans for a company that sounds, well, a lot like TikTok.

Originally called Xiangping, which roughly translates to “share comments,” the new company was based on a simple idea: Instead of having users choose people or groups to follow, Xiangping would mine their data and select content for them.

The goal was to “pick the hottest information to jump-start the viral spreading,” reads the memo, which was prepared by Susquehanna’s Chinese subsidiary.

The documents are “remarkable,” Andrew Collier, the managing director at Orient Capital Research, told me. Although the project was clearly in flux, he added, the letter “outlines a business plan for a company that does sound a lot like the current-day TikTok.”

Mr. Zhang became the company’s founder.

Where did the TikTok technology come from?

Two former contractors are suing Susquehanna, accusing the firm of taking cutting-edge search technology to ByteDance without compensating them.

Susquehanna denies that and is fighting the lawsuit. And it is clear that the TikTok algorithm — which serves up videos that keep people scrolling — evolved over the years.

But the documents do show that ByteDance emerged from Susquehanna’s earlier investment in 99Fang. Whether the technology did, too, is a question that could end up before a jury.

Yass’s firm bet small and won big.

In 2012, Susquehanna’s Chinese subsidiary valued ByteDance at about $9 million. And it invested a little over $2 million in early money in the idea. It later contributed “hundreds of millions” more, according to court filings.

Today, the company is worth $225 billion , according to CB Insights, a firm that tracks venture capital and start-ups.

It was the venture capital equivalent of a home run.

That payoff is at risk.

Some U.S. lawmakers have raised concerns about national security. They say that TikTok has too much data on Americans and that ByteDance, a Chinese company, could use its algorithm to feed disinformation and propaganda to users.

Congress is debating a bill that would either ban TikTok in the United States or force ByteDance to sell the app.

That would be devastating to Susquehanna, which, according to reporting by The New York Times and others, owns a roughly 15 percent stake in ByteDance.

Mr. Yass is financing a libertarian group that is defending TikTok. He is also the largest donor this election cycle, with more than $46 million in contributions through the end of last year, according to OpenSecrets, a research group that tracks money in politics.

The documents are sealed again.

After reading the records, my colleague and I began asking people for comment. Lawyers for Susquehanna responded, saying the documents should not have been made public. They contacted the court, and the documents were sealed again.

Mara Hvistendahl is an investigative reporter for The Times focused on Asia. More about Mara Hvistendahl

The Rise of TikTok

News and Analysis

Court records, mistakenly made public, reveal a complex origin story for ByteDance , the Chinese owner of TikTok, and the role played by the firm of Republican megadonor Jeff Yass .

The House made another push to force through legislation that would require the sale of TikTok by its Chinese owner or ban the app in the United States by packaging the measure with aid to Ukraine and Israel .

By targeting TikTok, the United States may undermine its decades-long efforts to promote an open internet , and digital rights advocates are worried that other countries could follow suit.

“Being labeled a “yapper” on TikTok isn’t necessarily a compliment, but on a platform built on talk, it isn’t an insult either .

“Who TF Did I Marry?!?,” the TikTok user Reesa Teesa’s account of her relationship with her ex-husband, is a story for grown-ups  in their midlife crisis era.

Return fraud is a rampant problem  for both shoppers and retailers — and the mishaps often make for viral videos on TikTok.

The Pink Stuff, a home cleaning paste, went from total obscurity to viral sensation — and Walmart staple — thanks to one “cleanfluencer” and her legion of fans .

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