混合遗传算法与强化学习的遗传算法自动化设计

Ahmed Hassan, N. Pillay
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引用次数: 0

摘要

优化技术的自动化设计为推进最先进的优化技术提供了巨大的希望,在一些问题上它已经取代了人工专家的手工设计。遗传算法是解决自动化设计问题的关键方法之一。不幸的是,这些算法可能需要几个小时才能运行,因为适应度评估涉及解决一些基准实例,以确定候选配置的质量。本文将元遗传算法与强化学习相结合,用于自动设计二维装箱问题的遗传算法。元遗传算法的任务是搜索遗传算法的组态空间,而强化学习的任务是决定是否对候选组态进行评估。因此,避免在较差的配置上浪费计算预算。本文提出的混合遗传算法和不带强化学习的元遗传算法所产生的二维装箱问题的求解器与最先进的算法相竞争。然而,所提出的混合算法消耗的计算量约为未经强化学习的元遗传算法的25%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybridizing A Genetic Algorithm With Reinforcement Learning for Automated Design of Genetic Algorithms
The automated design of optimization techniques holds great promise for advancing state-of-the-art optimization techniques and it has already taken over the manual design by human experts in some problems. Genetic algorithms are one of the key approaches for tackling the automated design problem. Unfortunately, these algorithms may take several hours to run as the fitness evaluation involves solving some benchmark instances to determine the quality of a candidate configuration. In this paper, we hybridize a meta-genetic algorithm with reinforcement learning to automatically design genetic algorithms for the two-dimensional bin packing problem. The task of the meta-genetic algorithm is to search the configuration space of genetic algorithms and the task of reinforcement learning is to decide whether to evaluate a candidate configuration or not. Therefore, avoiding wasting the computational budget on poor configurations. The proposed hybrid and the meta-genetic algorithm without reinforcement learning produce solvers for the two-dimensional bin packing problem that are competitive with the state-of-the-art algorithms. However, the proposed hybrid consumes about 25% of the computational effort required by the meta-genetic algorithm without reinforcement learning.
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