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conference contribution
posted on 2025-01-15, 01:16authored byA Piad-Morffis, S Estevez-Velarde, A Bolufe-Rohler, James MontgomeryJames Montgomery, S Chen
When optimizing multi-modal spaces, effective search techniques must carefully balance two conflicting tasks: exploration and exploitation. The first refers to the process of identifying promising areas in the search space. The second refers to the process of actually finding the local optima in these areas. This balance becomes increasingly important in stochastic search, where the only knowledge about a function’s landscape relies on the relative comparison of random samples. Thresheld convergence is a technique designed to effectively separate the processes of exploration and exploitation. This paper addresses the design of thresheld convergence in the context of evolution strategies. We analyze the behavior of the standard (μ, λ)-ES on multi-modal landscapes and argue that part of it’s shortcomings are due to an ineffective balance between exploration and exploitation. Afterwards we present a design for thresheld convergence tailored to ES, as a simple yet effective mechanism to increase the performance of (μ, λ)-ES on multimodal functions.
History
Publication title
Proceedings of 2015 IEEE Congress on Evolutionary Computation
Volume
201212
Editors
S Obayashi, C Poloni, T Murata
Pagination
2097-2104
ISBN
978-1-4799-7491-7
Department/School
Information and Communication Technology
Publisher
IEEE-Inst Electrical Electronics Engineers Inc
Publication status
Published
Place of publication
USA
Event title
2015 IEEE Congress on Evolutionary Computation
Event Venue
Sendai, Japan
Date of Event (Start Date)
2015-05-25
Date of Event (End Date)
2015-05-28
Rights statement
Copyright 2015 IEEE
Socio-economic Objectives
280115 Expanding knowledge in the information and computing sciences