Research / BFI Working PaperMar 02, 2020

Random-Coefficients Logit Demand Estimation with Zero-Valued Market Shares

Although typically overlooked, many purchase datasets exhibit a high incidence of products with zero sales. We propose a new estimator for the Random-Coefficients Logit demand system for purchase datasets with zero-valued market shares. The identification of the demand parameters is based on a pairwise-differencing approach that constructs moment conditions based on differences in demand between pairs of products. The corresponding estimator corrects nonparametrically for the potential selection of the incidence of zeros on unobserved aspects of demand. The estimator also corrects for the potential endogeneity of marketing variables both in demand and in the selection propensities. Monte Carlo simulations show that our proposed estimator provides reliable small-sample inference both with and without selection-on-unobservables. In an empirical case study, the proposed estimator not only generates different demand estimates than approaches that ignore selection in the incidence of zero shares, it also generates better out-of-sample fit of observed retail contribution margins.

More Research From These Scholars

BFI Working Paper Jul 28, 2020

The Persuasive Effect of Fox News: Non-Compliance with Social Distancing During the COVID-19 Pandemic

Andrey Simonov, Szymon Sacher, Jean-Pierre Dubé, Shirsho Biswas
Topics:  COVID-19
BFI Working Paper Nov 23, 2021

Organizational Structure and Pricing: Evidence from a Large U.S. Airline

Ali Hortaçsu, Olivia R. Natan, Hayden Parsley, Timothy Schwieg, Kevin R. Williams
Topics:  Industrial Organization
BFI Working Paper Apr 18, 2019

The Production, Relocation, and Price Effects of US Trade Policy: The Case of Washing Machines

Aaron Flaaen, Ali Hortaçsu, Felix Tintelnot
Topics:  Industrial Organization, Tax & Budget