Search and Data Mining: Techniques. Applications Anya Yarygina Boris Novikov



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Transcription:

Search and Data Mining: Techniques Applications Anya Yarygina Boris Novikov

Introduction Data mining applications Data mining system products and research prototypes Additional themes on data mining Social impacts of data mining Trends in data mining 15.04.2014 Applications 2

Reference Jiawei Han, Micheline Kamber. Data Mining: Concepts and Techniques, 2nd Edition. The Morgan Kaufmann Series in Data Management Systems, 2006 15.04.2014 Applications 3

Data Mining Applications Data Mining for financial data analysis Data Mining for retail industry Data Mining for telecommunication industry Data Mining for biological data analysis Data Mining for other scientific applications Data Mining for intrusion detection 15.04.2014 Applications 4

Data Mining for financial data analysis Banking, credit, investment, insurance services Data: relatively complete, reliable, high quality Systematic data analysis and data mining Design and construction of data warehouses for multidimensional data analysis and data mining Loan payment prediction and customer credit policy analysis Classification and clustering of customers for target marketing Detection of money laundering and other financial crimes 15.04.2014 Applications 5

Data Mining for retail industry Huge amounts of data on sales, customer shopping history, goods transportation Data mining for retail industry Design and construction of data warehouses based on the benefits of data mining Multidimensional analysis of sales, customers, products, time, and region Analysis of the effectiveness of sales campaigns Analysis of customer loyalty Product recommendation and cross-referencing of items 15.04.2014 Applications 6

Data Mining for telecommunication industry Multidimensional analysis of telecommunication data Fraudulent pattern analysis and the identification of unusual patterns Multidimensional association and sequential pattern analysis Mobile telecommunication services Use of visualization tools in telecommunication data analysis 15.04.2014 Applications 7

Data Mining for biological data analysis Semantic integration of heterogeneous, distributed genomic and proteomic databases Alignment, indexing, similarity search, and comparative analysis of multiple nucleotide/protein sequences Discovery of structural patterns and analysis of genetic networks and protein pathways Identifying co-occurring gene sequences and linking genes to different stages of disease development Visualization tools in genetic data analysis 15.04.2014 Applications 8

Data Mining for other scientific applications Data warehouses and data preprocessing Mining complex data types Graph-based mining Visualization tools and domain-specific knowledge 15.04.2014 Applications 9

Data Mining for intrusion detection Development of data mining algorithms for intrusion detection Association and correlation analysis, and aggregation to help select and build discriminating attributes Analysis of stream data Distributed data mining Visualization and querying tools 15.04.2014 Applications 10

How to choose a data mining system? Data types System issues Data sources Data mining functions and methodologies Coupling data mining with database and/or data warehouse systems Scalability Visualization tools Data mining query language and graphical user interface 15.04.2014 Applications 11

Additional Themes on Data Mining Theoretical foundations of data mining Statistical data mining Visual and audio data mining Data mining and collaborative filtering 15.04.2014 Applications 12

Theoretical foundations of data mining Data reduction Data compression Pattern discovery Probability theory Microeconomic view Inductive databases 15.04.2014 Applications 13

Statistical data mining Regression Generalized linear models Analysis of variance Mixed-effect models Factor analysis Discriminant analysis Time series analysis Survival analysis Quality control 15.04.2014 Applications 14

Visual data mining Data visualization Data mining result visualization Data mining process visualization Interactive visual data mining 15.04.2014 Applications 15

Social Impacts of Data Mining Ubiquitous and invisible data mining Data mining, privacy, and data security 15.04.2014 Applications 16

Trend in Data Mining Application exploration Scalable interactive data mining methods Integration of data mining with database systems Standardization of data mining language Visual data mining New methods for mining complex types of data Biological data mining Data mining and software engineering Web mining Distributed data mining Real-time and time-critical data mining Graph mining, link analysis, and social network analysis Privacy protection and information security 15.04.2014 Applications 17

Outline Data mining applications Data mining system products and research prototypes Additional themes on data mining Social impacts of data mining Trends in data mining 15.04.2014 Applications 18