An Accelerated-Limit-Crossing-Based Multilevel Algorithm for the p-Median Problem.

Zhilei Ren, He Jiang, Jifeng Xuan, Zhongxuan Luo
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引用次数: 11

Abstract

In this paper, we investigate how to design an efficient heuristic algorithm under the guideline of the backbone and the fat, in the context of the p-median problem. Given a problem instance, the backbone variables are defined as the variables shared by all optimal solutions, and the fat variables are defined as the variables that are absent from every optimal solution. Identification of the backbone (fat) variables is essential for the heuristic algorithms exploiting such structures. Since the existing exact identification method, i.e., limit crossing (LC), is time consuming and sensitive to the upper bounds, it is hard to incorporate LC into heuristic algorithm design. In this paper, we develop the accelerated-LC (ALC)-based multilevel algorithm (ALCMA). In contrast to LC which repeatedly runs the time-consuming Lagrangian relaxation (LR) procedure, ALC is introduced in ALCMA such that LR is performed only once, and every backbone (fat) variable can be determined in O(1) time. Meanwhile, the upper bound sensitivity is eliminated by a dynamic pseudo upper bound mechanism. By combining ALC with the pseudo upper bound, ALCMA can efficiently find high-quality solutions within a series of reduced search spaces. Extensive empirical results demonstrate that ALCMA outperforms existing heuristic algorithms in terms of the average solution quality.

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一种基于加速极限交叉的p-中值问题多层算法。
本文以p中值问题为背景,研究如何在主干和脂肪的指导下设计一种高效的启发式算法。给定一个问题实例,骨干变量被定义为所有最优解共享的变量,脂肪变量被定义为每个最优解都不存在的变量。识别主干(脂肪)变量对于利用这种结构的启发式算法是必不可少的。由于现有的精确识别方法,即极限交叉法(LC)耗时且对上界敏感,因此难以将LC纳入启发式算法设计中。本文提出了基于加速lc (ALC)的多电平算法(ALCMA)。与LC重复运行耗时的拉格朗日松弛(LR)过程相反,ALC在ALCMA中引入,使得LR只执行一次,并且每个主干(脂肪)变量可以在O(1)时间内确定。同时,采用动态伪上界机制消除了上界灵敏度。ALCMA通过将ALC与伪上界相结合,可以在一系列简化的搜索空间中高效地找到高质量的解。大量的实证结果表明,ALCMA在平均解质量方面优于现有的启发式算法。
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