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A First Runtime Analysis of the NSGA-II on a Multimodal Problem

28 April 2022
Benjamin Doerr
Zhongdi Qu
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Abstract

Very recently, the first mathematical runtime analyses of the multi-objective evolutionary optimizer NSGA-II have been conducted. We continue this line of research with a first runtime analysis of this algorithm on a benchmark problem consisting of two multimodal objectives. We prove that if the population size NNN is at least four times the size of the Pareto front, then the NSGA-II with four different ways to select parents and bit-wise mutation optimizes the OneJumpZeroJump benchmark with jump size~2≤k≤n/42 \le k \le n/42≤k≤n/4 in time O(Nnk)O(N n^k)O(Nnk). When using fast mutation, a recently proposed heavy-tailed mutation operator, this guarantee improves by a factor of kΩ(k)k^{\Omega(k)}kΩ(k). Overall, this work shows that the NSGA-II copes with the local optima of the OneJumpZeroJump problem at least as well as the global SEMO algorithm.

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