Exact MCMC for Choices from Menus -- Measuring Substitution and Complementarity among Menu Items

Tetyana Kosyakova, Thomas Otter, S. Misra, C. Neuerburg
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引用次数: 10

Abstract

Choice environments in practice are often more complicated than the well-studied case of choice between perfect substitutes. Consumers choosing from menus or configuring products face choice sets that consist of substitutes, complements, and independent items, and the utility-maximizing choice corresponds to a particular item combination out of a potentially huge number of possible combinations. This reality is mirrored in menu-based choice experiments. The inferential challenge posed by data from such choices is in the calibration of utility functions that accommodate a mix of substitutes, complements, and independent items. We develop a model that not only accounts for heterogeneity in preferences, but also in what consumers perceive to be substitutes and complements and show how to perform Bayesian inference for this model based on the exact likelihood, despite its practically intractable normalizing constant. We characterize the model from first principles and show how it structurally improves on the multivariate probit model and on models that include cross-price effects in the utility function. We find empirical support for our model in a menu-based discrete choice experiment investigating demand for game consoles and accessories. Finally, we illustrate substantial implications from modeling substitution and complementarity for optimal pricing.
菜单选择的精确MCMC——衡量菜单项之间的替代和互补性
实践中的选择环境往往比在完全替代品之间进行选择的充分研究的案例更为复杂。从菜单中进行选择或配置产品的消费者面临着由替代品、补充物和独立项目组成的选择集,而效用最大化的选择对应于潜在的大量可能组合中的特定项目组合。这一现实反映在基于菜单的选择实验中。来自这些选择的数据所带来的推理挑战是在适应替代、补充和独立项目混合的效用函数的校准中。我们开发了一个模型,该模型不仅考虑了偏好的异质性,而且考虑了消费者认为的替代品和互补,并展示了如何基于精确的似然对该模型执行贝叶斯推理,尽管它实际上难以规范化常数。我们从第一原理描述了模型的特征,并展示了它如何在多变量probit模型和包括效用函数中交叉价格效应的模型上进行结构性改进。我们在一个基于菜单的离散选择实验中发现了对我们模型的实证支持,该实验调查了游戏机和配件的需求。最后,我们说明了建模替代和互补性对最优定价的重要影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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