Abstract

Abstract The successful development of marketing strategies requires the accurate measurement of household preferences and their reaction to variables such as price and advertising. Manufacturers, for example, often offer products at a reduced price for a limited period. One reason for this practice is that it induces households to try the promoted product with the hope of retaining them as permanent customers. The successful implementation of this strategy requires knowledge of the extent of price sensitivity in the population, effective methods of advertising, and the existence of a carry-over effect in the household's evaluation of the product. Logistic regression models are often used to relate household demographics, prices, and advertising variables to household purchase decisions. In this article we extend the standard model to include cross-sectional and serial correlation in household preferences and provide algorithms for estimating the model with random effects. The model is applied to scanner panel data for ketchup purchases, and substantive insights into household preference, brand switching, and autocorrelated purchase behavior are obtained.

Keywords

Logistic regressionProduct (mathematics)EconometricsDemographicsPreferenceBrand preferencePopulationAutocorrelationEconomicsNested logitMarketingRegression analysisAdvertisingBusinessMicroeconomicsStatisticsMathematicsBrand awareness

Affiliated Institutions

Related Publications

Publication Info

Year
1994
Type
article
Volume
89
Issue
428
Pages
1218-1231
Citations
208
Access
Closed

External Links

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

208
OpenAlex

Cite This

Greg M. Allenby, Peter Lenk (1994). Modeling Household Purchase Behavior with Logistic Normal Regression. Journal of the American Statistical Association , 89 (428) , 1218-1231. https://doi.org/10.1080/01621459.1994.10476863

Identifiers

DOI
10.1080/01621459.1994.10476863