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Feature Selection for Knowledge Discovery and Data Mining Softcover reprint of the original 1st ed. 1998 [Pehme köide]

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Teised raamatud teemal:
With advanced computer technologies and their omnipresent usage, data accumulates in a speed unmatchable by the human's capacity to process data. To meet this growing challenge, the research community of knowledge discovery from databases emerged. The key issue studied by this community is, in layman's terms, to make advantageous use of large stores of data. In order to make raw data useful, it is necessary to represent, process, and extract knowledge for various applications.
Feature Selection for Knowledge Discovery and Data Mining offers an overview of the methods developed since the 1970s and provides a general framework in order to examine these methods and categorize them. This book employs simple examples to show the essence of representative feature selection methods and compares them using data sets with combinations of intrinsic properties according to the objective of feature selection. In addition, the book suggests guidelines on how to use different methods under various circumstances and points out new challenges in this exciting area of research.
Feature Selection for Knowledge Discovery and Data Mining is intended to be used by researchers in machine learning, data mining, knowledge discovery and databases as a toolbox of relevant tools that help in solving large real-world problems. This book is also intended to serve as a reference book or secondary text for courses on machine learning, data mining, and databases.

Muu info

Springer Book Archives
1. Data Processing and KDD.- 1.1 Inductive Learning from Observation.-
1.2 Knowledge Discovery and Data Mining.- 1.3 Feature Selection and Its Roles
in KDD.- 1.4 Summary.- References.-
2. Perspectives of Feature Selection.-
2.1 Feature Selection for Classification.- 2.2 A Search Problem.- 2.3
Selection Criteria.- 2.4 Univariate vs. Multivariate Feature Selection.- 2.5
Filter vs. Wrapper Models.- 2.6 A Unified View.- 2.7 Conclusion.-
References.-
3. Aspects of Feature Selection.- 3.1 Overview.- 3.2 Basic
Feature Generation Schemes.- 3.3 Search Strategies.- 3.4 Evaluation Measures
With Examples.- 3.5 Conclusion.- References.-
4. Feature Selection Methods.-
4.1 Representative Feature Selection Algorithms.- 4.2 Employing Feature
Selection Methods.- 4.3 Conclusion.- References.-
5. Evaluation and
Application.- 5.1 Performance Assessment.- 5.2 Evaluation Methods for
Classification.- 5.3 Evaluation of Selected Features.- 5.4 Evaluation: Some
Examples.- 5.5 Balance between Different Performance Criteria.- 5.6 Applying
Feature Selection Methods.- 5.7 Conclusions.- References.-
6. Feature
Transformation and Dimensionality Reduction.- 6.1 Feature Extraction.- 6.2
Feature Construction.- 6.3 Feature Discretization.- 6.4 Beyond the
Classification Model.- 6.5 Conclusions.- References.-
7. Less is More.- 7.1 A
Look Back.- 7.2 A Glance Ahead.- References.- Appendices.- A-Data Mining and
Knowledge Discovery Sources.- A.1 Web Site Links.- A.2 Electronic
Newsletters, Pages and Journals.- A.3 Some Publically Available Tools.-
B-Data Sets and Software Used in This Book.- B.1 Data Sets.- B.2 Software.-
References.