论文标题
一种使用模拟和suplodulity解决基于选择的竞争设施位置问题的无模型方法
A model-free approach for solving choice-based competitive facility location problems using simulation and submodularity
论文作者
论文摘要
本文认为,进入市场的公司试图在候选地点的一部分中开放设施,以便最大化其预期的市场份额,假设客户选择客户选择可用的替代方案来最大化随机公用事业功能,则该公司的位置问题。我们介绍了此随机问题的确定性重新重新构造,作为最大覆盖位置问题,需求点数量数量,每个需求点都由不同的候选位置覆盖。通过仿真估算这些偏好概况的普遍性从文献中概括了样本平均近似方法,并导致最大覆盖位置问题的可管理大小问题。为了解决它,我们开发了部分弯曲者的重新制定,在这种重新制定中,对影响最小的偏好概况的目标的贡献是由下次切割汇总和界定的。这组配置文件是通过膝盖检测方法选择的,该方法旨在确定主要问题中保留的需求的比例与模型大小之间的最佳权衡。我们对我们的方法进行了理论分析,并表明它为原始随机问题,其计算绩效以及其利用的自动档案保留策略提供的解决方案质量直接连接到人群中偏好曲线的熵。计算实验表明,我们的方法在大型实例上主导了经典样本平均近似方法,在多项式logit模型下,从文献中胜过最佳的启发式方法,并在混合的多项式logit模型下实现了最先进的结果。我们表征了更广泛的问题,其中包括分类优化,可以扩展解决本文的解决方法和分析。
This paper considers facility location problems in which a firm entering a market seeks to open facilities on a subset of candidate locations so as to maximize its expected market share, assuming that customers choose the available alternative that maximizes a random utility function. We introduce a deterministic equivalent reformulation of this stochastic problem as a maximum covering location problem with an exponential number of demand points, each of which is covered by a different set of candidate locations. Estimating the prevalence of these preference profiles through simulation generalizes a sample average approximation method from the literature and results in a maximum covering location problem of manageable size. To solve it, we develop a partial Benders reformulation in which the contribution to the objective of the least influential preference profiles is aggregated and bounded by submodular cuts. This set of profiles is selected by a knee detection method that seeks to identify the best tradeoff between the fraction of the demand that is retained in the master problem and the size of the model. We develop a theoretical analysis of our approach and show that the solution quality it provides for the original stochastic problem, its computational performance, and the automatic profile-retention strategy it exploits are directly connected to the entropy of the preference profiles in the population. Computational experiments indicate that our approach dominates the classical sample average approximation method on large instances, can outperform the best heuristic method from the literature under the multinomial logit model, and achieves state-of-the-art results under the mixed multinomial logit model. We characterize a broader class of problems, which includes assortment optimization, to which the solving methodology and the analyses developed in this paper can be extended.