Learning automata induced artificial bee colony for noisy optimization

P. Rakshit, A. Konar, A. Nagar
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引用次数: 9

Abstract

We propose two extensions of the traditional artificial bee colony algorithm to proficiently optimize noisy fitness. The first strategy is referred to as stochastic learning automata induced adaptive sampling. It is employed with an aim to judiciously select the sample size for the periodic fitness evaluation of a trial solution, based on the fitness variance in its local neighborhood. The local neighborhood fitness variance is here used to capture the noise distribution in the local surrounding of a candidate solution of the noisy optimization problem. The second strategy is concerned with determining the effective fitness estimate of a trial solution using the distribution of its noisy fitness samples, instead of direct averaging of the samples. Computer simulations undertaken on the noisy versions of a set of 28 benchmark functions reveal that the proposed algorithm outperforms its contenders with respect to function error value in a statistically significant manner.
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学习自动机诱导的人工蜂群噪声优化
我们提出了传统人工蜂群算法的两个扩展,以熟练地优化噪声适应度。第一种策略是随机学习自动机诱导自适应采样。它的目的是根据一个试验解的局部邻域的适应度方差,明智地选择用于试验解的周期性适应度评估的样本量。局部邻域适应度方差用于捕获噪声优化问题候选解的局部周围的噪声分布。第二种策略是利用噪声适应度样本的分布来确定一个试验解的有效适应度估计,而不是直接对样本进行平均。对一组28个基准函数的噪声版本进行的计算机模拟表明,所提出的算法在函数误差值方面以统计显著的方式优于其竞争对手。
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