On the genetic adaptation of stochastic learning automata

Mark N Howell, T. Gordon
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引用次数: 2

Abstract

Both stochastic learning automata and genetic algorithms have previously been shown to have valuable global optimisation properties. Learning automata have however been criticised for their perceived slow rate of convergence. In this paper these two techniques are combined to provide an increase in the rate of convergence for the learning automata and also to improve the escape from local minima. The technique separates the genotype and phenotype properties of the genetic algorithm and has the advantage that the degree of convergence can be quickly ascertained. It also provides the genetic algorithm with a stopping rule and enables bounds to be given on the parameter values obtained.
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随机学习自动机的遗传适应性研究
随机学习自动机和遗传算法都已被证明具有有价值的全局优化特性。然而,学习自动机因其缓慢的收敛速度而受到批评。本文将这两种技术结合起来,以提高学习自动机的收敛速度,并改善从局部极小值的逃脱。该技术分离了遗传算法的基因型和表型特性,并具有快速确定收敛程度的优点。它还为遗传算法提供了一个停止规则,并允许对得到的参数值给出边界。
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