Methods for Improving the Design and Performance of Evolutionary Algorithms

Date

2012

Authors

Bassett, Jeffrey Kermes

Journal Title

Journal ISSN

Volume Title

Publisher

Abstract

Evolutionary Algorithms (EAs) can be applied to almost any optimization or learning problem by making some simple customizations to the underlying represen- tation and/or reproductive operators. This makes them an appealing choice when facing a new or unusual problem. Unfortunately, while making these changes is often easy, getting a customized EA to operate effectively (i.e. find a good solution quickly) can be much more difficult.

Description

Keywords

Computer science, Customization, Evolutionary computation, Genetic programming, Heritability, Price's theorem, Quantitative genetics

Citation