Tracking Differential Evolution Algorithms: An Adaptive Approach through Multinomial Distribution Tracking with Exponential Forgetting

TitleTracking Differential Evolution Algorithms: An Adaptive Approach through Multinomial Distribution Tracking with Exponential Forgetting
Publication TypeBook Chapter
Year of Publication2012
AuthorsEpitropakis, MG, Tasoulis, DK, Pavlidis, NG, Plagianakos, VP, Vrahatis, MN
EditorMaglogiannis, I, Plagianakos, VP, Vlahavas, I
Book TitleArtificial Intelligence: Theories and Applications
Series TitleLecture Notes in Computer Science
Volume7297
Pagination214-222
PublisherSpringer Berlin / Heidelberg
ISBN Number978-3-642-30447-7
Abstract

Several Differential Evolution variants with modified search dynamics have been recently proposed, to improve the performance of the method. This work borrows ideas from adaptive filter theory to develop an “online” algorithmic adaptation framework. The proposed framework is based on tracking the parameters of a multinomial distribution to reflect changes in the evolutionary process. As such, we design a multinomial distribution tracker to capture the successful evolution movements of three Differential Evolution algorithms, in an attempt to aggregate their characteristics and their search dynamics. Experimental results on ten benchmark functions and comparisons with five state-of-the-art algorithms indicate that the proposed framework is competitive and very promising.

DOI10.1007/978-3-642-30448-4_27
AttachmentSize
PDF icon EpitropakisTPPVSETN2012.pdf134.88 KB

Scholarly Lite is a free theme, contributed to the Drupal Community by More than Themes.