Davis-Stober Clintin P, Doignon Jean-Paul, Fiorini Samuel, Glineur Francois, Regenwetter Michel
University of Missouri, Columbia.
Université Libre de Bruxelles, Belgium.
J Math Psychol. 2018 Dec;87:1-10. doi: 10.1016/j.jmp.2018.08.003. Epub 2018 Sep 21.
Mathematical psychology has a long tradition of modeling probabilistic choice via distribution-free random utility models and associated random preference models. For such models, the predicted choice probabilities often form a bounded and convex polyhedral set, or polytope. Polyhedral combinatorics have thus played a key role in studying the mathematical structure of these models. However, standard methods for characterizing the polytopes of such models are subject to a combinatorial explosion in complexity as the number of choice alternatives increases. Specifically, this is the case for random preference models based on linear, weak, semi- and interval orders. For these, a complete, linear description of the polytope is currently known only for, at most, 5-8 choice alternatives. We leverage the method of extended formulations to break through those boundaries. For each of the four types of preferences, we build an appropriate network, and show that the associated network flow polytope provides an extended formulation of the polytope of the choice model. This extended formulation has a simple linear description that is more parsimonious than descriptions obtained by standard methods for large numbers of choice alternatives. The result is a computationally less demanding way of testing the probabilistic choice model on data. We sketch how the latter interfaces with recent developments in contemporary statistics.
数学心理学有着通过无分布随机效用模型及相关随机偏好模型对概率选择进行建模的悠久传统。对于此类模型,预测的选择概率通常会形成一个有界的凸多面体集,即多胞形。因此,多面体组合学在研究这些模型的数学结构中发挥了关键作用。然而,随着选择项数量的增加,用于刻画此类模型多胞形的标准方法会面临复杂度上的组合爆炸问题。具体而言,基于线性、弱、半序和区间序的随机偏好模型就是这种情况。对于这些模型,目前仅知道在最多5 - 8个选择项的情况下多胞形的完整线性描述。我们利用扩展公式法突破这些界限。对于四种偏好类型中的每一种,我们构建一个合适的网络,并表明相关的网络流多胞形提供了选择模型多胞形的扩展公式。这种扩展公式具有简单的线性描述,对于大量选择项而言,它比通过标准方法获得的描述更为简洁。其结果是一种在计算上对数据测试概率选择模型要求较低的方法。我们概述了后者如何与当代统计学的最新发展相结合。