Дискретная математика и математическая кибернетика
Обобщенная мутация с тяжелыми хвостами для эволюционных алгоритмов
А. В. Еремеевab,
Д. В. Силаевa,
В. А. Топчийab a Novosibirsk State University, 1, Pirogova str., Novosibirsk, 630090, Russia
b Sobolev Institute of Mathematics, pr. Koptyuga, 4, 630090, Novosibirsk, Russia,
Аннотация:
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
$(1+(\lambda,\lambda))$ genetic algorithm obtained by Antipov, Buzdalov and Doerr (2022) for the OneMax function class parametrized by the problem dimension
$n$. 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
$O(n)$ optimization time in expectation, may be generalized as well. This optimization time is known to be asymptotically faster than what can be achieved by the
$(1+(\lambda,\lambda))$ 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.
Ключевые слова:
Evolutionary algorithms, regularly varying functions, heavy-tailed mutation, optimization time.
УДК:
519.712
MSC: 68Q25;
60-08 Поступила 15 апреля 2024 г., опубликована
1 ноября 2024 г.
DOI:
10.33048/semi.2024.21.062