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Approaching the rank aggregation problem by local search-based metaheuristics

机译:通过基于地方搜索的美化学方法接近排名聚合问题

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Encouraged by the success of applying metaheuristics algorithms to other ranking-based problems (Kemeny ranking problem and parameter estimation for Mallows distributions), in this paper we deal with the rank aggregation problem (RAP), which can be viewed as a generalization of the Kemeny problem to arbitrary rankings. While in the Kemeny problem the input is a set of permutations, the RAP consists in obtaining the consensus permutation for a sample of arbitrary rankings. This is an NP-hard problem which can be approached by using greedy heuristic algorithms (e.g. Borda). Such algorithms are fast but the solutions so obtained are far to be optimal. In this paper, we propose the use of more complex search processes to deal with the RAP. In particular, we perform a comparative study among some local-based search metaheuristics: hill climbing (HC). iterated local search (ILS), variable neighborhood search (VNS) and greedy randomized adaptive search procedure (GRASP). We provide a complete analysis of the experimental study regarding accuracy and number of iterations required to reach the best solution. From the results we can conclude that the selection of a suitable neighborhood plays a key role, and that depending on the available resources (cpu time) a different algorithm (VNS, ILS or GRASP) could be the proper choice. (C) 2018 Elsevier B.V. All rights reserved.
机译:通过将Metaheureistics算法应用于其他基于排名的问题的成功(Kemeny排名问题和Mallows分布的参数估计)的鼓励,我们处理排名聚集问题(RAP),这可以被视为kemeny的概括任意排名问题。虽然在Kemeny问题中,输入是一系列排列,但RAP包括获得任意排名样本的共识置换。这是一个NP难题,可以通过使用贪婪的启发式算法(例如BORDA)来接近。这种算法很快,但如此获得的解决方案远非最佳。在本文中,我们建议使用更复杂的搜索过程来处理RAP。特别是,我们在一些基于本地搜索型训练中进行比较研究:爬山(HC)。迭代本地搜索(ILS),可变邻域搜索(VNS)和贪婪随机自适应搜索过程(掌握)。我们对关于达到最佳解决方案所需的迭代的准确性和数量的实验研究提供了完整的分析。从结果我们可以得出结论,选择合适的社区的选择扮演一个关键作用,并且根据可用资源(CPU时间)不同的算法(VNS,ILS或掌握)可以是正确的选择。 (c)2018年elestvier b.v.保留所有权利。

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