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Dispersion-Based Population Initialization

机译:基于分散的总体初始化

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摘要

Reliable execution and analysis of an evolutionary algorithm (EA) normally requires many runs to provide reasonable assurance that stochastic effects have been properly considered. One of the first stochastic influences on the behavior of an EA is the population initialization. This has been recognized as a potentially serious problem to the performance of EAs but little progress has been made in improving the situation. Using a better population initialization algorithm would not be expected to improve the many-run average performance of an EA, but instead, it would be expected to reduce the variance of the results, without loss of average performance. This would provide researchers the opportunity to reliably examine their experimental results while requiring fewer EA runs for an appropriate statistical sample. This paper uses recent advances in the measurement and control of a population's dispersion in a search space to present a novel algorithm for better population initialization. Experimental verification of the usefulness of the new technique is provided.
机译:可靠地执行和分析进化算法(EA)通常需要进行多次运行才能合理保证已正确考虑了随机效应。对EA行为的第一个随机影响之一是总体初始化。这已被视为对EA的性能可能造成严重影响的问题,但在改善这种情况方面进展甚微。使用更好的总体初始化算法不会期望提高EA的多次运行平均性能,但是可以期望在不损失平均性能的情况下减少结果的差异。这将为研究人员提供机会可靠地检查他们的实验结果,同时为适当的统计样本减少EA运行次数。本文利用在测量和控制搜索空间中的人口分散性方面的最新进展,提出了一种用于更好地进行人口初始化的新算法。实验验证了新技术的有效性。

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