克隆alg免疫算法的动态自适应标定

M. Riff, Elizabeth Montero
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引用次数: 1

摘要

仿生算法执行过程中的参数控制是一个开放的研究领域。本文针对免疫算法CLONALG提出了一种新的参数控制策略。我们的方法是基于强化学习的思想。我们将注意力集中在控制克隆的数量和选择细胞的数量,这些细胞遵循突变过程进行改进。它们的价值允许在强化搜索和多样化搜索之间进行权衡。该方法为参数控制提供了一种高效、低成本的自适应技术。我们使用了之前使用CLONALG解决过的旅行推销员问题的实例。所得结果令人鼓舞。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Dynamic Adaptive Calibration of the CLONALG Immune Algorithm
The control of parameters during the execution of bio-inspired algorithms is an open research area. In this paper, we propose a new parameter control strategy for the immune algorithm CLONALG. Our approach is based on reinforcement learning ideas. We focus our attention on controlling the number of clones and the number of selected cells which follow a mutation process for improvement. Their values allow a trade-off between intensification and diversification of the search. Our approach provides an efficient and low cost adaptive technique for parameter control. We use instances of the Travelling Salesman Problem that has been tackled before by using CLONALG. The results obtained are very encouraging.
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