总需求随机系数Logit模型的半非参数估计

Zhentong Lu, Xiaoxia Shi, Jing Tao
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引用次数: 7

摘要

本文针对广泛应用的随机系数logit需求模型,提出了一种两步半非参数估计。第一步,利用logit选择概率的结构,将全需求系统转化为部分线性模型,并使用标准线性筛广义矩法(GMM)估计固定(非随机)系数。在第二步中,我们构造一个筛最小距离(MD)估计器来揭示随机系数的非参数分布。我们建立了该估计量的渐近性质,并给出了该模型在大市场环境下的半非参数辨识。蒙特卡罗模拟和实证实例支持了理论结果,并证明了我们的估计方法在实践中的有效性。
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Semi-Nonparametric Estimation of Random Coefficient Logit Model for Aggregate Demand
In this paper, we propose a two-step semi-nonparametric estimator for the widely used random coefficient logit demand model. In the first step, exploiting the structure of logit choice probabilities, we transform the full demand system into a partial linear model and estimate the fixed (non-random) coefficients using standard linear sieve generalized method of moment (GMM). In the second step, we construct a sieve minimum distance (MD) estimator to uncover the distribution of random coefficients nonparametrically. We establish the asymptotic properties of the estimator and show the semi-nonparametric identification of the model in a large market environment. Monte Carlo simulations and empirical illustrations support the theoretical results and demonstrate the usefulness of our estimator in practice.
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