English

Generalized Heavy-tailed Mutation for Evolutionary Algorithms

Neural and Evolutionary Computing 2026-04-02 v1

Abstract

The heavy-tailed mutation operator, proposed by Doerr, Le, Makhmara, and Nguyen (2017) for evolutionary algorithms, is based on the power-law assumption of mutation rate distribution. Here we generalize the power-law assumption using a regularly varying constraint on the distribution function of mutation rate. In this setting, we generalize the upper bounds on the expected optimization time of the (1+(λ,λ))(1+(\lambda,\lambda)) genetic algorithm obtained by Antipov, Buzdalov and Doerr (2022) for the OneMax function class parametrized by the problem dimension nn. In particular, it is shown that, on this function class, the sufficient conditions of Antipov, Buzdalov and Doerr (2022) on the heavy-tailed mutation, ensuring the O(n)O(n) optimization time in expectation, may be generalized as well. This optimization time is known to be asymptotically smaller than what can be achieved by the (1+(λ,λ))(1+(\lambda,\lambda)) genetic algorithm with any static mutation rate. A new version of the heavy-tailed mutation operator is proposed, satisfying the generalized conditions, and promising results of computational experiments are presented.

Keywords

Cite

@article{arxiv.2604.00502,
  title  = {Generalized Heavy-tailed Mutation for Evolutionary Algorithms},
  author = {Anton V. Eremeev and Dmitri V. Silaev and Valentin A. Topchii},
  journal= {arXiv preprint arXiv:2604.00502},
  year   = {2026}
}

Comments

Presented at the international conference dedicated to mathematics in artificial intelligence (MathAI-2026). Translated from the publication in Russian: A.V. Eremeev, D.V. Silaev, and Topchii V.A. Generalized heavy-tailed mutation for evolutionary algorithms. Sibirskie Elektronnye Matematicheskie Izvestiya [Siberian Electronic Mathematical Reports], 21:940-959, 2024. DOI: 10.33048/semi.2024.21.062

R2 v1 2026-07-01T11:47:39.886Z