<P>CΠΡndida Ferreira thoroughly describes the basic ideas of gene expression programming (GEP) and numerous modifications to this powerful new algorithm. This monograph provides all the implementation details of GEP so that anyone with elementary programming skills will be able to implement it thems
Gene Expression Programming: Mathematical Modeling by an Artificial Intelligence
β Scribed by CΓ’ndida Ferreira Dr. (auth.)
- Publisher
- Springer-Verlag Berlin Heidelberg
- Year
- 2006
- Tongue
- English
- Leaves
- 492
- Series
- Studies in Computational Intelligence 21
- Edition
- 2
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
CΓ’ndida Ferreira thoroughly describes the basic ideas of gene expression programming (GEP) and numerous modifications to this powerful new algorithm. This monograph provides all the implementation details of GEP so that anyone with elementary programming skills will be able to implement it themselves. The book also includes a self-contained introduction to this new exciting field of computational intelligence, including several new algorithms for decision tree induction, data mining, classifier systems, function finding, polynomial induction, times series prediction, evolution of linking functions, automatically defined functions, parameter optimization, logic synthesis, combinatorial optimization, and complete neural network induction. The book also discusses some important and controversial evolutionary topics that might be refreshing to both evolutionary computer scientists and biologists.
This second edition has been substantially revised and extended with five new chapters, including a new chapter describing two new algorithms for inducing decision trees with nominal and numeric/mixed attributes.
CΓ’ndida Ferreira thoroughly describes the basic ideas of gene
expression programming (GEP) and numerous modifications to this
powerful new algorithm. This monograph provides all the implementation
details of GEP so that anyone with elementary programming
skills will be able to implement it themselves. The book also includes a
self-contained introduction to this new exciting field of computational
intelligence, including several new algorithms for decision tree
induction, data mining, classifier systems, function finding, polynomial
induction, times series prediction, evolution of linking functions,
automatically defined functions, parameter optimization, logic
synthesis, combinatorial optimization, and complete neural network
induction. The book also discusses some important and controversial
evolutionary topics that might be refreshing to both evolutionary
computer scientists and biologists. This second edition has been
substantially revised and extended with five new chapters, including
a new chapter describing two new algorithms for inducing decision
trees with nominal and numeric/mixed attributes.
β¦ Table of Contents
Introduction: The Biological Perspective....Pages 1-27
The Entities of Gene Expression Programming....Pages 29-54
The Basic Gene Expression Algorithm....Pages 55-120
The Basic GEA in Problem Solving....Pages 121-180
Numerical Constants and the GEP-RNC Algorithm....Pages 181-232
Automatically Defined Functions in Problem Solving....Pages 233-273
Polynomial Induction and Time Series Prediction....Pages 275-295
Parameter Optimization....Pages 297-336
Decision Tree Induction....Pages 337-380
Design of Neural Networks....Pages 381-403
Combinatorial Optimization....Pages 405-420
Evolutionary Studies....Pages 421-456
β¦ Subjects
Appl.Mathematics/Computational Methods of Engineering; Artificial Intelligence (incl. Robotics); Bioinformatics
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This book describes the basic ideas of gene expression programming (GEP) and numerous modifications to this powerful new algorithm. It provides all the implementation details of GEP so that anyone with elementary programming skills will be able to implement it themselves. The book includes a self-co
CΓ’ndida Ferreira thoroughly describes the basic ideas of gene expression programming (GEP) and numerous modifications to this powerful new algorithm. This monograph provides all the implementation details of GEP so that anyone with elementary programming skills will be able to implement it themselve
I have no idea how this is marketed as a college level text on the subject. It is just a 'high level' text suitable for non programmers interested in learning some of the terminology regarding Genetic Programming, with little or no practical information. This book was published in 1998, there are