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Learning behavior in abstract memory schemes for dynamic optimization problems

机译:动态优化问题中抽象记忆方案中的学习行为

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摘要

Integrating memory into evolutionary algorithms is one major approach to enhance their performance in dynamic environments. An abstract memory scheme has been recently developed for evolutionary algorithms in dynamic environments, where the abstraction of good solutions is stored in the memory instead of good solutions themselves to improve future problem solving. This paper further investigates this abstract memory with a focus on understanding the relationship between learning and memory, which is an important but poorly studied issue for evolutionary algorithms in dynamic environments. The experimental study shows that the abstract memory scheme enables learning processes and hence efficiently improves the performance of evolutionary algorithms in dynamic environments.
机译:将内存集成到进化算法中是提高其在动态环境中性能的一种主要方法。最近已经为动态环境中的演化算法开发了一种抽象的存储方案,其中好的解决方案的抽象而不是好的解决方案本身存储在内存中,以改善未来的问题解决方案。本文进一步研究了这种抽象记忆,重点是了解学习与记忆之间的关系,这是动态环境中进化算法的重要但研究不足的问题。实验研究表明,抽象内存方案可以实现学习过程,从而有效地提高了动态环境中进化算法的性能。

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