Given data on choices made by consumers for different assortments, a key challenge is to develop parsimonious models that describe and predict consumer choice behavior. One such choice model is the marginal distribution model which requires only the specification of the marginal distributions of the random utilities of the alternatives to explain choice data. In this paper, we develop an exact characterisation of the set of choice probabilities which are representable by the marginal distribution model consistently across any collection of assortments. Allowing for the possibility of alternatives to be grouped based on the marginal distribution of their utilities, we show (a) verifying consistency of choice probability data with this model is possible in polynomial time and (b) finding the closest fit reduces to solving a mixed integer convex program. Our results show that the marginal distribution model provides much better representational power as compared to multinomial logit and much better computational performance as compared to the random utility model.
翻译:考虑到关于消费者为不同种类选择的数据,一个关键的挑战是如何开发描述和预测消费者选择行为的偏差模型。这种选择模型之一是边际分配模型,该模型只要求指定替代品随机功能的边际分布,以解释选择数据。在本文中,我们开发了一套选择概率的精确特征,这些概率可以通过边际分配模型在各种分类的收集中一致地代表。允许基于其公用事业的边际分布将替代品组合在一起的可能性,我们表明:(a) 核实选择概率数据与这一模型的一致性在多元时间是可能的,以及(b) 找到最接近的适合解决混合整形二次曲线程序。我们的结果显示,边际分配模型提供比多元对流更好的代表力,而且与随机的实用模型相比,计算性要好得多。