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Tail Bounds on the Runtime of Categorical Compact Genetic Algorithm.

作者信息

Hamano Ryoki, Uchida Kento, Shirakawa Shinichi, Morinaga Daiki, Akimoto Youhei

机构信息

CyberAgent, Inc., Tokyo, Japan

Yokohama National University, Kanagawa, Japan

出版信息

Evol Comput. 2025 Jun 2;33(2):141-189. doi: 10.1162/evco_a_00361.

DOI:10.1162/evco_a_00361
PMID:39353171
Abstract

The majority of theoretical analyses of evolutionary algorithms in the discrete domain focus on binary optimization algorithms, even though black-box optimization on the categorical domain has many practical applications. In this paper, we consider a probabilistic model-based algorithm using the family of categorical distributions as its underlying distribution and set the sample size as two. We term this specific algorithm the categorical compact genetic algorithm (ccGA). The ccGA can be considered as an extension of the compact genetic algorithm (cGA), which is an efficient binary optimization algorithm. We theoretically analyze the dependency of the number of possible categories K, the number of dimensions D, and the learning rate η on the runtime. We investigate the tail bound of the runtime on two typical linear functions on the categorical domain: categorical OneMax (COM) and KVal. We derive that the runtimes on COM and KVal are O(Dln(DK)/η) and Θ(DlnK/η) with high probability, respectively. Our analysis is a generalization for that of the cGA on the binary domain.

摘要

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