Conformant and Efficient Estimation of Discrete Choice Demand Models

Abstract

We propose a likelihood-based estimator for random coefficients discrete choice demand models that is applicable in a broad range of data settings. Intuitively, it combines the likelihoods of two mixed logit estimators—one for consumer level data, and one for product level data—with product level exogeneity restrictions. Our estimator is both efficient and conformant: its rates of convergence will be the fastest possible given the variation available in the data. The researcher does not need to pre-test or adjust the estimator and the inference procedure is valid across a wide variety of scenarios. Moreover, it can be tractably applied to large datasets. We illustrate the features of our estimator by comparing it to alternatives in the literature.

Publication
Revising for Econometrica
Date