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Boosting local search with Lagrangian relaxation

机译:通过拉格朗日放宽来促进本地搜索

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摘要

Local search algorithms play an essential role in solving large-scale combinatorial optimization problems. Traditionally, the local search procedure is guided mainly by the objective function of the problem. Hence, the greedy improvement paradigm poses the potential threat of prematurely getting trapped in low quality attraction basins. In this study, we intend to utilize the information extracted from the relaxed problem, to enhance the performance of the local search process. Considering the Lin-Kernighan-based local search (LK-search) for the p-median problem as a case study, we propose the Lagrangian relaxation Assisted Neighborhood Search (LANS). In the proposed algorithm, two new mechanisms, namely the neighborhood reduction and the redundancy detection, are developed. The two mechanisms exploit the information gathered from the relaxed problem, to avoid the search from prematurely targeting low quality directions, and to cut off the non-promising searching procedure, respectively. Extensive numerical results over the benchmark instances demonstrate that LANS performs favorably to LK-search, which is among the state-of-the-art local search algorithms for the p-median problem. Furthermore, by embedding LANS into other heuristics, the best known upper bounds over several benchmark instances could be updated. Besides, run-time distribution analysis is also employed to investigate the reason why LANS works. The findings of this study confirm that the idea of improving local search by leveraging the information induced from relaxed problem is feasible and practical, and might be generalized to a broad class of combinatorial optimization problems.
机译:本地搜索算法在解决大规模组合优化问题中起着至关重要的作用。传统上,本地搜索过程主要由问题的目标函数决定。因此,贪婪的改进范式构成了过早陷入低质量吸引盆地的潜在威胁。在这项研究中,我们打算利用从松弛问题中提取的信息来增强本地搜索过程的性能。考虑到针对p中值问题的基于Lin-Kernighan的本地搜索(LK-search),我们提出了Lagrangian松弛辅助邻居搜索(LANS)。在提出的算法中,开发了两种新的机制,即邻域约简和冗余检测。这两种机制分别利用从松弛问题中收集的信息来避免搜索过早地针对低质量方向,并切断了没有希望的搜索过程。在基准实例上的大量数值结果表明,LANS在LK搜索方面表现出色,这是解决p中值问题的最新本地搜索算法之一。此外,通过将LANS嵌入其他启发式方法,可以更新多个基准实例的最著名上限。此外,还使用运行时分布分析来调查LANS起作用的原因。这项研究的结果证实,通过利用由松弛问题引起的信息来改进局部搜索的想法是可行和实用的,并且可能会推广到一类广泛的组合优化问题。

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