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Optimal Computing Budget Allocation for Particle Swarm Optimizationin Stochastic Optimization

机译:粒子群算法的最优计算预算分配随机优化

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摘要

Particle Swarm Optimization (PSO) is a popular metaheuristic for deterministic optimization. Originated in the interpretations of the movement of individuals in a bird flock or fish school, PSO introduces the concept of personal best and global best to simulate the pattern of searching for food by flocking and successfully translate the natural phenomena to the optimization of complex functions. Many real-life applications of PSO cope with stochastic problems. To solve a stochastic problem using PSO, a straightforward approach is to equally allocate computational effort among all particles and obtain the same number of samples of fitness values. This is not an efficient use of computational budget and leaves considerable room for improvement. This paper proposes a seamless integration of the concept of optimal computing budget allocation (OCBA) into PSO to improve the computational efficiency of PSO for stochastic optimization problems. We derive an asymptotically optimal allocation rule to intelligently determine the number of samples for all particles such that the PSO algorithm can efficiently select the personal best and global best when there is stochastic estimation noise in fitness values. We also propose an easy-to-implement sequential procedure. Numerical tests show that our newapproach can obtain much better results using the same amount of computationaleffort.
机译:粒子群优化(PSO)是用于确定性优化的流行的元启发式算法。 PSO起源于对鸟群或鱼类学校中个体运动的解释,引入了个人最佳和全球最佳的概念,以模拟通过植绒进行觅食的模式,并将自然现象成功地转化为复杂功能的优化。 PSO的许多实际应用都可以解决随机问题。为了使用PSO解决随机问题,一种直接的方法是在所有粒子之间平均分配计算工作量,并获得相同数量的适应度值样本。这不是对计算预算的有效利用,并留下了很大的改进空间。本文提出将最优计算预算分配(OCBA)概念无缝集成到PSO中,以提高PSO求解随机优化问题的计算效率。我们得出一个渐近最优分配规则,以智能地确定所有粒子的样本数,以便当适应度值中存在随机估计噪声时,PSO算法可以有效地选择最佳个人和全局最佳。我们还提出了一个易于实现的顺序过程。数值测试表明,我们的新使用相同数量的计算方法,该方法可以获得更好的结果努力。

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