Stochastic Population Update Can Provably Be Helpful in Multi-Objective Evolutionary Algorithms
June 05, 2023 ยท Declared Dead ยท ๐ International Joint Conference on Artificial Intelligence
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Authors
Chao Bian, Yawen Zhou, Miqing Li, Chao Qian
arXiv ID
2306.02611
Category
cs.NE: Neural & Evolutionary
Cross-listed
cs.AI
Citations
47
Venue
International Joint Conference on Artificial Intelligence
Last Checked
3 months ago
Abstract
Evolutionary algorithms (EAs) have been widely and successfully applied to solve multi-objective optimization problems, due to their nature of population-based search. Population update, a key component in multi-objective EAs (MOEAs), is usually performed in a greedy, deterministic manner. That is, the next-generation population is formed by selecting the best solutions from the current population and newly-generated solutions (irrespective of the selection criteria used such as Pareto dominance, crowdedness and indicators). In this paper, we analytically present that stochastic population update can be beneficial for the search of MOEAs. Specifically, we prove that the expected running time of two well-established MOEAs, SMS-EMOA and NSGA-II, for solving two bi-objective problems, OneJumpZeroJump and bi-objective RealRoyalRoad, can be exponentially decreased if replacing its deterministic population update mechanism by a stochastic one. Empirical studies also verify the effectiveness of the proposed population update method. This work is an attempt to show the benefit of introducing randomness into the population update of MOEAs. Its positive results, which might hold more generally, should encourage the exploration of developing new MOEAs in the area.
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