Applied Genetic Programming and Machine Learning

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A01=Hitoshi Iba
A01=Topon Kumar Paul
A01=Yoshihiko Hasegawa
algorithm
Annotation Size
Author_Hitoshi Iba
Author_Topon Kumar Paul
Author_Yoshihiko Hasegawa
Bayesian Network
bioinformatics feature selection
Black Scholes Formula
Category=UYQM
chaotic time series analysis
computation
Data Set
Derivation Trees
Em Algorithm
ensemble classification
eq_bestseller
eq_computing
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
evolutionary
evolutionary algorithms for data mining
evolutionary computation
Execution Time
Feature Selection Methods
Feature Subset
financial forecasting models
fitness
GMDH Algorithm
GP
GP GP
GP Parameter
GP Rule
Internal Validation Data
Local Hill Climbing
MDL Value
Microarray Data
node
non-terminal
Non-terminal Node
operator
Predictive Posterior Distribution
search
Standard GP
symbolic regression
tabu
Terminal Set
Test Instance
Training Instances
Training Subset
value

Product details

  • ISBN 9781439803691
  • Weight: 720g
  • Dimensions: 156 x 234mm
  • Publication Date: 26 Aug 2009
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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What do financial data prediction, day-trading rule development, and bio-marker selection have in common? They are just a few of the tasks that could potentially be resolved with genetic programming and machine learning techniques. Written by leaders in this field, Applied Genetic Programming and Machine Learning delineates the extension of Genetic Programming (GP) for practical applications.

Reflecting rapidly developing concepts and emerging paradigms, this book outlines how to use machine learning techniques, make learning operators that efficiently sample a search space, navigate the search process through the design of objective fitness functions, and examine the search performance of the evolutionary system. It provides a methodology for integrating GP and machine learning techniques, establishing a robust evolutionary framework for addressing tasks from areas such as chaotic time-series prediction, system identification, financial forecasting, classification, and data mining.

The book provides a starting point for the research of extended GP frameworks with the integration of several machine learning schemes. Drawing on empirical studies taken from fields such as system identification, finanical engineering, and bio-informatics, it demonstrates how the proposed methodology can be useful in practical inductive problem solving.

Iba, Hitoshi; Hasegawa, Yoshihiko; Paul, Topon Kumar

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