比尔:多人总比一人好

S. Zhou, Zeng-qi Sun
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摘要

Schapire, r.e.,(1990)可以将表现略好于随机猜测的“弱”学习算法“提升”为任意精确的“强”学习算法。受“集成方法”思想的启发,本文提出了一种新的EDA集成概念模型:利用一组EDA对同一问题进行优化,在进化过程中EDA之间发生信息交互,最终获得最优解的可能性比单个“强”EDA更大。以PBIL集成模型为例进行了详细的设计。每个PBIL都是PBIL集成中的一个组件,并相互协作,有效地完成优化过程。在背包问题和函数优化问题上的实验表明,PBIL集成比简单遗传算法和PBIL具有更好的性能。令人惊讶的是,对于GA-hard问题,例如4阶完全欺骗问题,PBIL集成几乎总是可以获得最优解
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PBIL ensemble: many better than one
A `weak' learning algorithm that performs just slightly better than random guessing can be `boosted' into an arbitrarily accurate `strong' learning algorithm by Schapire, R.E., (1990), Inspired from the `ensemble method' idea, the paper proposes a novel conceptive model of EDA ensemble: a collection of EDAs are used to optimize the same problem, during the evolution process information interaction happens among EDAs, and at last optimum solutions can be obtained more likely than a single `strong' EDA. As an instance, PBIL ensemble model is designed in details. Every PBIL serves as a component in PBIL ensemble and cooperate with others to efficiently accomplish an optimization process. Experiments on knapsack problems and function optimization problems show that PBIL ensemble exhibits better performance than simple GA and PBIL. And amazingly, to the GA-hard problem, e.g. 4-order fully deceptive problem, PBIL ensemble can achieve the optimal solution almost all the time
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