A First Running Time Analysis of the Strength Pareto Evolutionary Algorithm 2 (SPEA2)
June 23, 2024 ยท Declared Dead ยท ๐ Parallel Problem Solving from Nature
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Authors
Shengjie Ren, Chao Bian, Miqing Li, Chao Qian
arXiv ID
2406.16116
Category
cs.NE: Neural & Evolutionary
Citations
24
Venue
Parallel Problem Solving from Nature
Last Checked
4 months ago
Abstract
Evolutionary algorithms (EAs) have emerged as a predominant approach for addressing multi-objective optimization problems. However, the theoretical foundation of multi-objective EAs (MOEAs), particularly the fundamental aspects like running time analysis, remains largely underexplored. Existing theoretical studies mainly focus on basic MOEAs, with little attention given to practical MOEAs. In this paper, we present a running time analysis of strength Pareto evolutionary algorithm 2 (SPEA2) for the first time. Specifically, we prove that the expected running time of SPEA2 for solving three commonly used multi-objective problems, i.e., $m$OneMinMax, $m$LeadingOnesTrailingZeroes, and $m$-OneJumpZeroJump, is $O(ฮผn\cdot \min\{m\log n, n\})$, $O(ฮผn^2)$, and $O(ฮผn^k \cdot \min\{mn, 3^{m/2}\})$, respectively. Here $m$ denotes the number of objectives, and the population size $ฮผ$ is required to be at least $(2n/m+1)^{m/2}$, $(2n/m+1)^{m-1}$ and $(2n/m-2k+3)^{m/2}$, respectively. The proofs are accomplished through general theorems which are also applicable for analyzing the expected running time of other MOEAs on these problems, and thus can be helpful for future theoretical analysis of MOEAs.
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