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Combinatorial Machine Learning: A Rough Set Approach

✍ Scribed by Mikhail Moshkov, Beata Zielosko (auth.)


Publisher
Springer-Verlag Berlin Heidelberg
Year
2011
Tongue
English
Leaves
184
Series
Studies in Computational Intelligence 360
Edition
1
Category
Library

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No coin nor oath required. For personal study only.

✦ Synopsis


Decision trees and decision rule systems are widely used in different applications

as algorithms for problem solving, as predictors, and as a way for

knowledge representation. Reducts play key role in the problem of attribute

(feature) selection. The aims of this book are (i) the consideration of the sets

of decision trees, rules and reducts; (ii) study of relationships among these

objects; (iii) design of algorithms for construction of trees, rules and reducts;

and (iv) obtaining bounds on their complexity. Applications for supervised

machine learning, discrete optimization, analysis of acyclic programs, fault

diagnosis, and pattern recognition are considered also. This is a mixture of

research monograph and lecture notes. It contains many unpublished results.

However, proofs are carefully selected to be understandable for students.

The results considered in this book can be useful for researchers in machine

learning, data mining and knowledge discovery, especially for those who are

working in rough set theory, test theory and logical analysis of data. The book

can be used in the creation of courses for graduate students.

✦ Table of Contents


Front Matter....Pages -
Front Matter....Pages 1-3
Examples from Applications....Pages 5-20
Front Matter....Pages 21-21
Sets of Tests, Decision Rules and Trees....Pages 23-36
Bounds on Complexity of Tests, Decision Rules and Trees....Pages 37-46
Algorithms for Construction of Tests, Decision Rules and Trees....Pages 47-67
Decision Tables with Many-Valued Decisions....Pages 69-86
Approximate Tests, Decision Trees and Rules....Pages 87-109
Front Matter....Pages 111-111
Supervised Learning....Pages 113-126
Local and Global Approaches to Study of Trees and Rules....Pages 127-142
Decision Trees and Rules over Quasilinear Information Systems....Pages 143-153
Recognition of Words and Diagnosis of Faults....Pages 155-170
Back Matter....Pages -

✦ Subjects


Computational Intelligence; Artificial Intelligence (incl. Robotics)


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