Compression Schemes for Mining Large Datasets: A Machine Learning Perspective

This document was uploaded by one of our users. The uploader already confirmed that they had the permission to publish it. If you are author/publisher or own the copyright of this documents, please report to us by using this DMCA report form.

Simply click on the Download Book button.

Yes, Book downloads on Ebookily are 100% Free.

Sometimes the book is free on Amazon As well, so go ahead and hit "Search on Amazon"

This book addresses the challenges of data abstraction generation using a least number of database scans, compressing data through novel lossy and non-lossy schemes, and carrying out clustering and classification directly in the compressed domain. Schemes are presented which are shown to be efficient both in terms of space and time, while simultaneously providing the same or better classification accuracy. Features: describes a non-lossy compression scheme based on run-length encoding of patterns with binary valued features; proposes a lossy compression scheme that recognizes a pattern as a sequence of features and identifying subsequences; examines whether the identification of prototypes and features can be achieved simultaneously through lossy compression and efficient clustering; discusses ways to make use of domain knowledge in generating abstraction; reviews optimal prototype selection using genetic algorithms; suggests possible ways of dealing with big data problems using multiagent systems.

Author(s): T. Ravindra Babu, M. Narasimha Murty, S.V. Subrahmanya (auth.)
Series: Advances in Computer Vision and Pattern Recognition
Edition: 1
Publisher: Springer-Verlag London
Year: 2013

Language: English
Pages: 197
Tags: Pattern Recognition; Data Mining and Knowledge Discovery; Artificial Intelligence (incl. Robotics)

Front Matter....Pages I-XVI
Introduction....Pages 1-10
Data Mining Paradigms....Pages 11-46
Run-Length-Encoded Compression Scheme....Pages 47-66
Dimensionality Reduction by Subsequence Pruning....Pages 67-94
Data Compaction Through Simultaneous Selection of Prototypes and Features....Pages 95-124
Domain Knowledge-Based Compaction....Pages 125-145
Optimal Dimensionality Reduction....Pages 147-172
Big Data Abstraction Through Multiagent Systems....Pages 173-183
Back Matter....Pages 185-197