SOTAVerified

Identification and Estimation of Discrete Choice Models with Unobserved Choice Sets

2019-07-09Unverified0· sign in to hype

Victor H. Aguiar, Nail Kashaev

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

We propose a framework for nonparametric identification and estimation of discrete choice models with unobserved choice sets. We recover the joint distribution of choice sets and preferences from a panel dataset on choices. We assume that either the latent choice sets are sparse or that the panel is sufficiently long. Sparsity requires the number of possible choice sets to be relatively small. It is satisfied, for instance, when the choice sets are nested, or when they form a partition. Our estimation procedure is computationally fast and uses mixed-integer optimization to recover the sparse support of choice sets. Analyzing the ready-to-eat cereal industry using a household scanner dataset, we find that ignoring the unobservability of choice sets can lead to biased estimates of preferences due to significant latent heterogeneity in choice sets.

Tasks

Reproductions