利用部分评价实现高度可扩展的进化实值优化

IF 4.6 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Evolutionary Computation Pub Date : 2021-03-02 DOI:10.1162/evco_a_00275
Anton Bouter;Tanja Alderliesten;Peter A.N. Bosman
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引用次数: 10

摘要

众所周知,为了实现进化算法(EA)的有效可扩展性,在变化过程中必须适当考虑依赖性(也称为链接)。在灰盒优化(GBO)设置中,利用有关这些依赖关系的先验知识可以极大地有利于优化。我们特别考虑可以进行部分评估的设置,这意味着可以有效地评估解决方案的部分修改。这些问题可能非常困难,例如,不可分离、多模式和多目标。基因库优化混合进化算法(GOMEA)可以有效地利用部分评估,从而显著提高性能和可扩展性。GOMEA最近被证明可以通过与分布算法AMaLGaM的实值估计相结合来扩展到实值优化。在这篇文章中,我们明确地介绍了实值GOMEA(RV-GOMEA),并介绍了一种新的变体,通过将GOMEA与可以说是最著名的实值EA——协方差矩阵自适应进化策略(CMA-ES)相结合而构建。将GOMEA的两种变体与L-BFGS和有限存储器CMA-ES(LM-CMA-ES)进行比较。我们表明,RV-GOMEA的两种变体在GBO设置中都实现了出色的性能和可扩展性,这可能比无法有效利用GBO设置的EA要好几个数量级。
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Achieving Highly Scalable Evolutionary Real-Valued Optimization by Exploiting Partial Evaluations
It is known that to achieve efficient scalability of an Evolutionary Algorithm (EA), dependencies (also known as linkage) must be properly taken into account during variation. In a Gray-Box Optimization (GBO) setting, exploiting prior knowledge regarding these dependencies can greatly benefit optimization. We specifically consider the setting where partial evaluations are possible, meaning that the partial modification of a solution can be efficiently evaluated. Such problems are potentially very difficult, for example, non-separable, multimodal, and multiobjective. The Gene-pool Optimal Mixing Evolutionary Algorithm (GOMEA) can effectively exploit partial evaluations, leading to a substantial improvement in performance and scalability. GOMEA was recently shown to be extendable to real-valued optimization through a combination with the real-valued estimation of distribution algorithm AMaLGaM. In this article, we definitively introduce the Real-Valued GOMEA (RV-GOMEA), and introduce a new variant, constructed by combining GOMEA with what is arguably the best-known real-valued EA, the Covariance Matrix Adaptation Evolution Strategies (CMA-ES). Both variants of GOMEA are compared to L-BFGS and the Limited Memory CMA-ES (LM-CMA-ES). We show that both variants of RV-GOMEA achieve excellent performance and scalability in a GBO setting, which can be orders of magnitude better than that of EAs unable to efficiently exploit the GBO setting.
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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.
期刊最新文献
Tail Bounds on the Runtime of Categorical Compact Genetic Algorithm. Optimizing Monotone Chance-Constrained Submodular Functions Using Evolutionary Multi-Objective Algorithms. Genetic Programming for Automatically Evolving Multiple Features to Classification. A Tri-Objective Method for Bi-Objective Feature Selection in Classification. Preliminary Analysis of Simple Novelty Search.
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