Data mining : the textbook
Material type: TextPublication details: New York Springer 2015Description: xxix, 734pISBN:- 9783319381169 (pbk.)
- 006.312 AGG
Item type | Current library | Collection | Call number | Status | Date due | Barcode | |
---|---|---|---|---|---|---|---|
Book | Plaksha University Library | Computer science | 006.312 AGG (Browse shelf(Opens below)) | Available | 004554 | ||
Book | Plaksha University Library | Computer science | 006.312 AGG (Browse shelf(Opens below)) | Available | 003877 |
Browsing Plaksha University Library shelves, Collection: Computer science Close shelf browser (Hides shelf browser)
006.31 WIE Reinforcement learning : state-of-the-art | 006.31 WIE Reinforcement learning : state-of-the-art | 006.312 AGG Data mining : the textbook | 006.312 AGG Data mining : the textbook | 006.312 BHA Data mining and data warehousing : principles and practical techniques | 006.312 DUH Data mining techniques and applications : an introduction | 006.312 EMC Data science & big data analytics : discovering, analyzing, visualizing and presenting data |
https://www.worldcat.org/title/907922612
This textbook explores the different aspects of data mining from the fundamentals to the complex data types and their applications, capturing the wide diversity of problem domains for data mining issues. It goes beyond the traditional focus on data mining problems to introduce advanced data types such as text, time series, discrete sequences, spatial data, graph data, and social networks. Until now, no single book has addressed all these topics in a comprehensive and integrated way. The chapters of this book fall into one of three categories: Fundamental chapters: Data mining has four main problems, which correspond to clustering, classification, association pattern mining, and outlier analysis. These chapters comprehensively discuss a wide variety of methods for these problems. Domain chapters: These chapters discuss the specific methods used for different domains of data such as text data, time-series data, sequence data, graph data, and spatial data. Application chapters: These chapters study important applications such as stream mining, Web mining, ranking, recommendations, social networks, and privacy preservation. The domain chapters also have an applied flavor. Appropriate for both introductory and advanced data mining courses, Data Mining: The Textbook balances mathematical details and intuition. It contains the necessary mathematical details for professors and researchers, but it is presented in a simple and intuitive style to improve accessibility for students and industrial practitioners (including those with a limited mathematical background). Numerous illustrations, examples, and exercises are included, with an emphasis on semantically interpretable examples. Praise for Data Mining: The Textbook - ℓ́ℓAs I read through this book, I have already decided to use it in my classes. ℗ℓThis is a book written by an outstanding researcher who has made fundamental contributions to data mining, in a way that is both accessible and up to date. ℗ℓThe book is complete with theory and practical use cases. ℗ℓItℓ́ℓs a must-have for students and professors alike!"--Qiang Yang, Chair of Computer Science and Engineering at Hong Kong University of Science and Technology "This is the most amazing and comprehensive text book on data mining. It covers not only the fundamental problems, such as clustering, classification, outliers and frequent patterns, and different data types, including text, time series, sequences, spatial data and graphs, but also various applications, such as recommenders, Web, social network and privacy.℗ℓ It is a great book for graduate students and researchers as well as practitioners."--Philip S. Yu, UIC Distinguished Professor and Wexler Chair in Information Technology at University of Illinois at Chicago
There are no comments on this title.