REAL ANALYTIC DISCRETE CHOICE MODELS OF DEMAND: THEORY AND IMPLICATIONS

Alessandro Iaria, Ao Wang
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Abstract

We demonstrate that a large class of discrete choice models of demand can be approximated by real analytic demand models. We obtain this result by combining (i) a novel real analytic property of the mixed logit and the mixed probit models with any distribution of random coefficients and (ii) an approximation property of finite mixtures of Gumbel and Gaussian distributions. To illustrate some of the implications of this result, we discuss how real analyticity facilitates nonparametric and semi-nonparametric identification, extrapolation to hypothetical counterfactuals, numerical implementation of demand inverses, and numerical implementation of the maximum likelihood estimator.
需求的真实分析离散选择模型:理论与影响
我们证明,一大类需求的离散选择模型可以用真实分析需求模型来近似。我们通过结合(i)具有任意随机系数分布的混合 logit 模型和混合 probit 模型的新型实分析特性,以及(ii)Gumbel 和高斯分布的有限混合物的近似特性,得出了这一结果。为了说明这一结果的一些含义,我们讨论了实分析性如何促进非参数和半非参数识别、外推到假设的反事实、需求倒数的数值实现以及最大似然估计器的数值实现。
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