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A hybrid evolutionary algorithm with guided mutation for minimum weight dominating set

机译:具有最小权重控制集的带引导突变的混合进化算法

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摘要

This paper presents a hybrid evolutionary algorithm with guided mutation (EA/G) to solve the minimum weight dominating set problem (MWDS) which is -hard in nature not only for general graphs, but also for unit disk graphs (UDG). MWDS finds practical applications in diverse domains such as clustering in wireless networks, intrusion detection in adhoc networks, multi-document summarization in information retrieval, query selection in web databases etc. EA/G is a recently proposed evolutionary algorithm that tries to overcome the shortcomings of genetic algorithms (GAs) and estimation of distribution algorithms (EDAs) both, and that can be considered as a cross between the two. The solution obtained through EA/G algorithm is further improved through an improvement operator. We have compared the performance of our hybrid evolutionary approach with the state-of-the-art approaches on general graphs as well as on UDG. Computational results show the superiority of our approach in terms of solution quality as well as execution time.
机译:本文提出了一种带有导引突变的混合进化算法(EA / G),以解决最小权重支配集问题(MWDS),这不仅对于一般图形,而且对于单位圆盘图(UDG)而言都是困难的。 MWDS在各种领域中都有实际应用,例如无线网络中的群集,自组织网络中的入侵检测,信息检索中的多文档摘要,Web数据库中的查询选择等。EA / G是最近提出的一种进化算法,旨在克服该缺点。遗传算法(GA)和分布算法(EDA)两者都可以被认为是两者之间的交叉。通过改进算子进一步改进了通过EA / G算法获得的解决方案。我们在普通图和UDG上将混合进化方法与最新方法的性能进行了比较。计算结果表明,我们的方法在解决方案质量和执行时间方面均具有优势。

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