遗传算子分配概率的自适应学习自动机

Korejo Imtiaz Ali, K. Brohi
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引用次数: 4

摘要

传统的遗传算法对整个种群使用单个突变算子,这意味着种群中的所有解都采用相同的学习策略。这种特性可能导致对特定个体缺乏智能,难以处理复杂的情况。在遗传算法中已经提出了不同的突变算子,但在遗传算法的进化过程中选择哪种突变算子是很困难的。本文将快速学习自动机应用于遗传算法中,在求解问题时自动选择最优策略。在不同基准问题上的实验结果表明,该方法具有较快的收敛速度,提高了遗传算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Adaptive Learning Automata for Genetic Operators Allocation Probabilities
The conventional Genetic algorithms (GAs) use a single mutation operator for whole population, It means that all solutions in population apply same leaning strategy. This property may cause lack of intelligence for specific individual, which is difficult to deal with complex situation. Different mutation operators have been suggested in GAs, but it is difficult to select which mutation operator should be used in the evolutionary process of GAs. In this paper, the fast learning automata is applied in GAs to automatically choose the most optimal strategy while solving the problem. Experimental results on different benchmark problems determines that the proposed method obtains the fast convergence speed and improve the performance of GAs.
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