Scalable Speed-ups for the SMS-EMOA from a Simple Aging Strategy

Different from single-objective evolutionary algorithms, where non-elitism is an established concept, multi-objective evolutionary algorithms almost always select the next population in a greedy fashion. In the only notable exception, Bian, Zhou, Li, and Qian (IJCAI 2023) proposed a stochastic selection mechanism for the SMS-EMOA and proved that it can speed up computing the Pareto front of the bi-objective jump benchmark with problem size and gap parameter by a factor of . While this constitutes the first proven speed-up from non-elitist selection, suggesting a very interesting research direction, it has to be noted that a true speed-up only occurs for , where the runtime is super-polynomial, and that the advantage reduces for larger numbers of objectives as shown in a later work. In this work, we propose a different non-elitist selection mechanism based on aging, which exempts individuals younger than a certain age from a possible removal. This remedies the two shortcomings of stochastic selection: We prove a speed-up by a factor of , regardless of the number of objectives. In particular, a positive speed-up can already be observed for constant , the only setting for which polynomial runtimes can be witnessed. Overall, this result supports the use of non-elitist selection schemes, but suggests that aging-based mechanisms can be considerably more powerful than stochastic selection mechanisms.
View on arXiv@article{li2025_2505.01647, title={ Scalable Speed-ups for the SMS-EMOA from a Simple Aging Strategy }, author={ Mingfeng Li and Weijie Zheng and Benjamin Doerr }, journal={arXiv preprint arXiv:2505.01647}, year={ 2025 } }