Multiobjective Evolutionary Algorithms Are Still Good: Maximizing Monotone Approximately Submodular Minus Modular Functions

IF 4.6 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Chao Qian
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引用次数: 13

Abstract

As evolutionary algorithms (EAs) are general-purpose optimization algorithms, recent theoretical studies have tried to analyze their performance for solving general problem classes, with the goal of providing a general theoretical explanation of the behavior of EAs. Particularly, a simple multiobjective EA, that is, GSEMO, has been shown to be able to achieve good polynomial-time approximation guarantees for submodular optimization, where the objective function is only required to satisfy some properties and its explicit formulation is not needed. Submodular optimization has wide applications in diverse areas, and previous studies have considered the cases where the objective functions are monotone submodular, monotone non-submodular, or non-monotone submodular. To complement this line of research, this article studies the problem class of maximizing monotone approximately submodular minus modular functions (i.e., g-c) with a size constraint, where g is a so-called non-negative monotone approximately submodular function and c is a so-called non-negative modular function, resulting in the objective function (g-c) being non-monotone non-submodular in general. Different from previous analyses, we prove that by optimizing the original objective function (g-c) and the size simultaneously, the GSEMO fails to achieve a good polynomial-time approximation guarantee. However, we also prove that by optimizing a distorted objective function and the size simultaneously, the GSEMO can still achieve the best-known polynomial-time approximation guarantee. Empirical studies on the applications of Bayesian experimental design and directed vertex cover show the excellent performance of the GSEMO.
多目标进化算法仍然很好:最大化单调近似子模负模函数
由于进化算法是一种通用的优化算法,最近的理论研究试图分析它们在解决一般问题类时的性能,目的是为进化算法的行为提供一般的理论解释。特别是,一个简单的多目标EA,即GSEMO,已经被证明能够为子模优化实现良好的多项式时间近似保证,其中目标函数只需要满足一些性质,而不需要其显式公式。子模优化在不同领域有着广泛的应用,以前的研究已经考虑了目标函数是单调子模、单调非子模或非单调子模的情况。为了补充这一研究,本文研究了具有大小约束的单调近似子模负模函数(即g-c)的最大化问题类,其中g是所谓的非负单调近似子模块函数,c是所谓的无负模函数,导致目标函数(g-c)一般是非单调的非子模。与以往的分析不同,我们证明了通过同时优化原始目标函数(g-c)和大小,GSEMO无法实现良好的多项式时间近似保证。然而,我们也证明了通过同时优化失真的目标函数和大小,GSEMO仍然可以实现最著名的多项式时间近似保证。对贝叶斯实验设计和有向顶点覆盖应用的实证研究表明,GSEMO具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Evolutionary Computation
Evolutionary Computation 工程技术-计算机:理论方法
CiteScore
6.40
自引率
1.50%
发文量
20
审稿时长
3 months
期刊介绍: Evolutionary Computation is a leading journal in its field. It provides an international forum for facilitating and enhancing the exchange of information among researchers involved in both the theoretical and practical aspects of computational systems drawing their inspiration from nature, with particular emphasis on evolutionary models of computation such as genetic algorithms, evolutionary strategies, classifier systems, evolutionary programming, and genetic programming. It welcomes articles from related fields such as swarm intelligence (e.g. Ant Colony Optimization and Particle Swarm Optimization), and other nature-inspired computation paradigms (e.g. Artificial Immune Systems). As well as publishing articles describing theoretical and/or experimental work, the journal also welcomes application-focused papers describing breakthrough results in an application domain or methodological papers where the specificities of the real-world problem led to significant algorithmic improvements that could possibly be generalized to other areas.
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