Machine learning for data streams: with practical examples in MOA
Material type: TextPublication details: The MIT press Cambridge 2017Description: xxi, 262 pISBN:- 9780262037792
- 006.312 BIF
Item type | Current library | Collection | Call number | Copy number | Status | Date due | Barcode | |
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Book | Indian Institute of Management LRC General Stacks | IT & Decisions Sciences | 006.312 BIF (Browse shelf(Opens below)) | 1 | Available | 003699 |
Browsing Indian Institute of Management LRC shelves, Shelving location: General Stacks, Collection: IT & Decisions Sciences Close shelf browser (Hides shelf browser)
006.312 AGG Data mining: the textbook | 006.312 AND Doing data science in R: | 006.312 AND Statistics for big data for dummies | 006.312 BIF Machine learning for data streams: | 006.312 BRA Principles of data mining | 006.312 CHA Research analytics: | 006.312 CHA Artificial intelligence and data mining for mergers and acquisitions |
A hands-on approach to tasks and techniques in data stream mining and real-time analytics, with examples in MOA, a popular freely available open-source software framework.
Today many information sources—including sensor networks, financial markets, social networks, and healthcare monitoring—are so-called data streams, arriving sequentially and at high speed. Analysis must take place in real time, with partial data and without the capacity to store the entire data set. This book presents algorithms and techniques used in data stream mining and real-time analytics. Taking a hands-on approach, the book demonstrates the techniques using MOA (Massive Online Analysis), a popular, freely available open-source software framework, allowing readers to try out the techniques after reading the explanations.
The book first offers a brief introduction to the topic, covering big data mining, basic methodologies for mining data streams, and a simple example of MOA. More detailed discussions follow, with chapters on sketching techniques, change, classification, ensemble methods, regression, clustering, and frequent pattern mining. Most of these chapters include exercises, an MOA-based lab session, or both. Finally, the book discusses the MOA software, covering the MOA graphical user interface, the command line, use of its API, and the development of new methods within MOA. The book will be an essential reference for readers who want to use data stream mining as a tool, researchers in innovation or data stream mining, and programmers who want to create new algorithms for MOA.
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