Mathematical Tools for Data Mining Mathematical Tools for Data Mining
Advanced Information and Knowledge Processing

Mathematical Tools for Data Mining

Set Theory, Partial Orders, Combinatorics

    • 109,99 €
    • 109,99 €

Publisher Description

Data mining essentially relies on several mathematical disciplines, many of which are presented in this second edition of this book.  Topics include partially ordered sets, combinatorics,  general topology, metric spaces, linear spaces, graph theory.  To motivate the reader a significant number of applications of these mathematical tools are included ranging from association rules, clustering algorithms, classification, data constraints, logical data analysis, etc.  The book is intended as a reference for researchers and graduate students. 

The current edition is a significant expansion of the first edition.  We strived to make the book self-contained, and only a general knowledge of mathematics is required.  More than 700 exercises are included and they form an integral part of the material.  Many exercises are in reality supplemental material and their solutions are included.

GENRE
Computing & Internet
RELEASED
2014
27 March
LANGUAGE
EN
English
LENGTH
842
Pages
PUBLISHER
Springer London
SIZE
33.4
MB

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