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首页> 外文期刊>International Journal on Computer Science and Engineering >An Integer Programming-based Local Search for Large-scale Maximal Covering Problems
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An Integer Programming-based Local Search for Large-scale Maximal Covering Problems

机译:基于整数编程的大规模最大覆盖问题的局部搜索

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摘要

Maximal covering problem (MCP) is classified as a linear integer optimization problem which can be effectively solved by integer programming technique. However, as the problem size grows, integer programming requires excessive time to get an optimal solution. This paper suggests a method for applying integer programming-based local search (IPbLS) to solve large-scale maximal covering problems. IPbLS, which is a hybrid technique combining integer programming and local search, is a kind of local search using integer programming for neighbor generation. IPbLS itself is very effective for MCP. In addition, we improve the performance of IPbLS for MCP through problem reduction based on the current solution. Experimental results show that the proposed method considerably outperforms any other local search techniques and integer programming.
机译:最大覆盖问题(MCP)被归类为线性整数优化问题,可以通过整数编程技术对其进行有效解决。但是,随着问题规模的扩大,整数编程需要大量时间才能获得最佳解决方案。本文提出了一种应用基于整数编程的局部搜索(IPbLS)来解决大规模最大覆盖问题的方法。 IPbLS是结合了整数编程和局部搜索的混合技术,是一种使用整数编程进行邻居生成的局部搜索。 IPbLS本身对MCP非常有效。此外,我们通过基于当前解决方案的问题减少来改善IPbLS for MCP的性能。实验结果表明,所提出的方法大大优于任何其他本地搜索技术和整数编程。

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