Local search algorithm to improve the local search

M. Tounsi, P. David
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引用次数: 2

Abstract

In this paper, we present a new cooperative framework based on using successively two local search algorithms to solve constraint satisfaction and optimization problems. Our technique is based on the integration of local search algorithms as a mechanism to diversify the search instead of using a build on diversification mechanisms. Thus we avoid tuning the multiple parameters to escape from a local optimum. This technique improves the existing methods: it is generic especially when the given problem can be expressed as a constraint satisfaction problem. We present the way the local search algorithm can be used to diversify the search in order to solve real examination timetabling problems. We describe how the local search algorithm can be used to assist any other specific local search algorithm to escape from local optimality.
局部搜索算法,改进局部搜索
本文提出了一种基于连续使用两种局部搜索算法来解决约束满足和优化问题的协作框架。我们的技术是基于局部搜索算法的集成作为多样化搜索的机制,而不是使用多样化机制的构建。因此,我们避免了调整多个参数以逃避局部最优。这种技术改进了现有的方法:它是通用的,特别是当给定的问题可以表示为约束满足问题时。为了解决实际的考试排课问题,我们提出了一种利用局部搜索算法进行多样化搜索的方法。我们描述了如何使用局部搜索算法来帮助任何其他特定的局部搜索算法摆脱局部最优性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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