先考虑后选择模型下的分类优化

A. Aouad, V. Farias, R. Levi
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引用次数: 64

摘要

先考虑后选择模型得到了市场营销和心理学方面的实证文献的证实,该模型解释说,消费者在选择产品时分两个阶段进行选择,首先是筛选产品,决定要考虑哪些替代品,然后对它们进行排名。本文建立了一个动态规划框架,研究了先考虑后选择前提下分类优化的计算问题。尽管非参数选择模型通常会导致计算上难以处理的分类优化问题,但我们能够证明,对于许多关于客户如何考虑和选择的经验审查假设,我们的结果动态规划是有效的。我们的方法统一并包含了以前文献中分析的几个专门设置。在经验上,我们在合成和真实行业数据集的组合上证明了我们的建模方法的预测能力,其中与常见参数选择模型相比,预测误差显着降低。在综合实验中,我们的算法产生了实用的计算方案,在几个感兴趣的参数体系中,就运行时间而言,这些方案优于最先进的整数规划求解器。论文被叶银玉接受,优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assortment Optimization Under Consider-Then-Choose Choice Models
Consider-then-choose models, borne out by empirical literature in marketing and psychology, explain that customers choose among alternatives in two phases, by first screening products to decide which alternatives to consider and then ranking them. In this paper, we develop a dynamic programming framework to study the computational aspects of assortment optimization under consider-then-choose premises. Although nonparametric choice models generally lead to computationally intractable assortment optimization problems, we are able to show that for many empirically vetted assumptions on how customers consider and choose, our resulting dynamic program is efficient. Our approach unifies and subsumes several specialized settings analyzed in previous literature. Empirically, we demonstrate the predictive power of our modeling approach on a combination of synthetic and real industry data sets, where prediction errors are significantly reduced against common parametric choice models. In synthetic experiments, our algorithms lead to practical computation schemes that outperform a state-of-the-art integer programming solver in terms of running time, in several parameter regimes of interest. This paper was accepted by Yinyu Ye, optimization.
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