There Is No Aggregation Bias: Why Macro Logit Models Work
- 1 January 1991
- journal article
- research article
- Published by Taylor & Francis in Journal of Business & Economic Statistics
- Vol. 9 (1) , 1-14
- https://doi.org/10.1080/07350015.1991.10509822
Abstract
In this article, we examine the aggregation properties of (nested) logit models to understand their exceptional macro-level performance. The problem of aggregating micro logit models involves integrating nonlinear functions of model parameters over a distribution of consumer heterogeneity. The aggregation problem is analyzed using a mixture of analytic and simulation techniques, with the simulation experiments using actual panel data to calibrate the distribution of heterogeneity. We conclude that the practice of fitting aggregate logit models is theoretically justified under the following three conditions: (1) All consumers are exposed to the same marketing-mix variables, (2) the brands are close substitutes, and (3) the distribution of prices is not concentrated at an extreme value. These conditions are frequently met in store-level scanner data.Keywords
This publication has 8 references indexed in Scilit:
- A Model of Brand Choice and Purchase Quantity Price SensitivitiesMarketing Science, 1988
- Completeness, Distribution Restrictions, and the Form of Aggregate FunctionsEconometrica, 1984
- On the Predictive Power of Market Share Attraction ModelsJournal of Marketing Research, 1984
- Chapter 24 Econometric analysis of qualitative response modelsPublished by Elsevier ,1984
- A Logit Model of Brand Choice Calibrated on Scanner DataMarketing Science, 1983
- Limited-dependent and qualitative variables in econometricsPublished by Cambridge University Press (CUP) ,1983
- Using Least Squares to Approximate Unknown Regression FunctionsInternational Economic Review, 1980
- Aggregation, Income Distribution and Consumer DemandThe Review of Economic Studies, 1975