离散响应的混合多项逻辑模型

Mixed MNL models for discrete response

Journal of Applied Econometrics · 2000
被引 323 · 同刊同年前 8%
人大 AABS 3

中文导读

证明混合多项逻辑模型可逼近任何随机效用最大化离散选择模型,给出参数估计和检验方法,并应用于替代车辆需求分析。

Abstract

This paper considers mixed, or random coefficients, multinomial logit (MMNL) models for discrete response, and establishes the following results. Under mild regularity conditions, any discrete choice model derived from random utility maximization has choice probabilities that can be approximated as closely as one pleases by a MMNL model. Practical estimation of a parametric mixing family can be carried out by Maximum Simulated Likelihood Estimation or Method of Simulated Moments, and easily computed instruments are provided that make the latter procedure fairly efficient. The adequacy of a mixing specification can be tested simply as an omitted variable test with appropriately defined artificial variables. An application to a problem of demand for alternative vehicles shows that MMNL provides a flexible and computationally practical approach to discrete response analysis. Copyright © 2000 John Wiley & Sons, Ltd.

混合MNL模型离散选择随机系数模拟估计