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Stochastic dynamics of adaptive evolutionary search

机译:自适应进化搜索的随机动力学

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In this paper the stochastic dynamics of adaptive evolutionary search, as performed by the optimization algorithm Population-Based Incremental Learning, is analyzed with physicists' methods for stochastic processes. The master equation of the process is approximated by van Kampen's small fluctuations assumption. It results in an elegant formalism which allows for an understanding of the macroscopic behaviour of the algorithm together with its fluctuations. We consider the search process to be adaptive since the algorithm iteratively reduces its mutation rate while approaching an optimum. On the one hand, it is this feature which allows the algorithm to quickly converge towards an optimum. On the other hand it results in the possibility to get trapped by a local optimum only. To arrive at a detailed understanding we discuss the influence of fluctuations, as caused by mutation, on this behaviour. We study the algorithm for rather small sytem sizes in order to gain an intuitive understanding of the algorithm's performance.
机译:在本文中,使用物理学家的随机过程方法分析了优化算法基于种群的增量学习所执行的自适应进化搜索的随机动力学。该过程的主方程由van Kampen的小波动假设近似。它产生了一种优雅的形式主义,可以理解算法的宏观行为及其波动。我们认为搜索过程是自适应的,因为该算法在达到最佳效果的同时迭代地降低了其突变率。一方面,正是这一功能使算法可以快速收敛到最佳状态。另一方面,这导致仅被局部最优约束的可能性。为了获得详细的了解,我们讨论了由突变引起的波动对这种行为的影响。为了获得对算法性能的直观了解,我们针对较小的系统尺寸研究了该算法。

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