Identification of Random Coefficient Latent Utility Models

R. Allen, John Rehbeck
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引用次数: 3

Abstract

This paper provides nonparametric identification results for random coefficient distributions in perturbed utility models. We cover discrete and continuous choice models. We establish identification using variation in mean quantities, and the results apply when an analyst observes aggregate demands but not whether goods are chosen together. We require exclusion restrictions and independence between random slope coefficients and random intercepts. We do not require regressors to have large supports or parametric assumptions.
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随机系数潜在效用模型的识别
本文提供了摄动实用新型中随机系数分布的非参数辨识结果。我们涵盖了离散和连续选择模型。我们使用平均数量的变化来建立识别,当分析师观察总需求而不是商品是否被一起选择时,结果适用。我们需要随机斜率系数和随机截距之间的排除限制和独立性。我们不要求回归量有很大的支持或参数假设。
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Assortment Optimization and Pricing Under the Threshold-Based Choice Models Robust Techniques to Estimate Parameters of Linear Models Identification of Random Coefficient Latent Utility Models An Algorithm for Assortment Optimization Under Parametric Discrete Choice Models Equivalent Choice Functions and Stable Mechanisms
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