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Support Vector Machines and Evolutionary Algorithms for Classification - Single or Together?

English · Paperback / Softback

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Description

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When discussing classification, support vector machines are known to be a capable and efficient technique to learn and predict with high accuracy within a quick time frame. Yet, their black box means to do so make the practical users quite circumspect about relying on it, without much understanding of the how and why of its predictions. The question raised in this book is how can this 'masked hero' be made more comprehensible and friendly to the public: provide a surrogate model for its hidden optimization engine, replace the method completely or appoint a more friendly approach to tag along and offer the much desired explanations? Evolutionary algorithms can do all these and this book presents such possibilities of achieving high accuracy, comprehensibility, reasonable runtime as well as unconstrained performance.

List of contents

Support Vector Machines.- Evolutionary Algorithms.- Support Vector Machines and Evolutionary Algorithms.

Summary

When discussing classification, support vector machines are known to be a capable and efficient technique to learn and predict with high accuracy within a quick time frame. Yet, their black box means to do so make the practical users quite circumspect about relying on it, without much understanding of the how and why of its predictions. The question raised in this book is how can this ‘masked hero’ be made more comprehensible and friendly to the public: provide a surrogate model for its hidden optimization engine, replace the method completely or appoint a more friendly approach to tag along and offer the much desired explanations? Evolutionary algorithms can do all these and this book presents such possibilities of achieving high accuracy, comprehensibility, reasonable runtime as well as unconstrained performance.

Additional text

From the book reviews:
“This book is intended for scholars, students, and developers who are interested and engaged in machine learning approaches and, particularly, in classification approaches via support vector machines (SVMs). … the book is recommended to those with advanced knowledge in machine learning and, in particular, SVMs as a hypothesis modeling classification approach. … the presentation of each topic remains systematic and the authors make good use of examples throughout the book.” (Epaminondas Kapetanios, Computing Reviews, November, 2014)

Report

From the book reviews:
"This book is intended for scholars, students, and developers who are interested and engaged in machine learning approaches and, particularly, in classification approaches via support vector machines (SVMs). ... the book is recommended to those with advanced knowledge in machine learning and, in particular, SVMs as a hypothesis modeling classification approach. ... the presentation of each topic remains systematic and the authors make good use of examples throughout the book." (Epaminondas Kapetanios, Computing Reviews, November, 2014)

Product details

Authors Catali Stoean, Catalin Stoean, Ruxandra Stoean
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 01.01.2016
 
EAN 9783319382432
ISBN 978-3-31-938243-2
No. of pages 122
Dimensions 154 mm x 7 mm x 234 mm
Weight 225 g
Illustrations XVI, 122 p. 31 illus.
Series Intelligent Systems Reference Library
Intelligent Systems Reference Library
Subjects Natural sciences, medicine, IT, technology > Technology > General, dictionaries

B, Artificial Intelligence, Support Vector Machines, engineering, Computational Intelligence, Rule Extraction, Multimodal Optimization

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