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On the average case performance of some greedy approximation algorithms for the uncapacitated facility location problem

机译:关于未加权设施位置问题的一些贪婪近似算法的平均案例

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In combinatorial optimization, a popular approach toNP-hard problems is the design of approximation algorithms. These algorithms typically run in polynomial time and are guaranteed to produce a solution which is within a known multiplicative factor of optimal. Unfortunately, the known factor is often known to be large in pathological instances. Conventional wisdom holds that, in practice, approximation algorithms will produce solutions closer to optimal than their proven guarantees. In this paper, we use the rigorous-analysis-of-heuristics framework to investigate this conventional wisdom.We analyze the performance of 3 related approximation algorithms for the uncapacitated facility location problem (from [Jain, Mahdian, Markakis, Saberi, Vazirani, 2003] and [Mahdian, Ye, Zhang, 2002]) when each is applied to an instances created by placing n points uniformly at random in the unit square. We find that, with high probability, these 3 algorithms do not find asymptotically optimal solutions, and, also with high probability, a simple plane partitioning heuristic does find an asymptotically optimal solution.
机译:在组合优化中,流行的方法TONP难题是近似算法的设计。这些算法通常在多项式时间中运行,并保证生成在已知的乘法因子的优化因子内的解决方案。不幸的是,已知已知因素在病理学实例中是大的。传统的智慧持有,在实践中,近似算法将产生比其已验证保证更接近最佳的解决方案。在本文中,我们使用严谨分析 - 启发式框架来调查这种传统智慧。我们分析了3个相关的设施位置问题的3个相关近似算法的性能(来自[Jain,Mahdian,Markakis,Saberi,Vazirani,2003 [Mahdian,Ye,Zhang,2002])当各自应用于通过在单位广场上随机均匀地放置n点而产生的实例。我们发现,具有很高的概率,这3种算法没有找到渐近最佳的解决方案,并且还具有高概率,简单的平面分区启发式确实找到了渐近最佳的解决方案。

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