Hierarchical Bayes Choice Model
Hierarchical Bayes (HB) choice models estimate a separate set of preference weights — partworths — for every individual respondent, while borrowing strength across respondents through a shared population distribution. The model has two levels: at the lower level each person's choices follow a logit driven by their own coefficients, and at the upper level those individual coefficients are treated as draws from a common multivariate distribution whose mean and covariance are themselves estimated. Inference is Bayesian and proceeds by Markov chain Monte Carlo — typically Gibbs sampling with Metropolis steps — which yields a full posterior for each respondent's partworths rather than a single point estimate. The approach, codified by Rossi, Allenby, and McCulloch, solved a long-standing problem in choice modeling: how to recover genuine individual-level heterogeneity from the sparse data each person provides. Sparse individual estimates are stabilized by shrinkage toward the population mean, giving reliable person-level coefficients usable for segmentation, targeting, and realistic market simulation. HB is now the default estimator for conjoint and scanner-based choice analysis.
Leia o método completo
Entre com uma conta gratuita para ler esta seção.
Mapa de métodos
A vizinhança de métodos relacionados — selecione um nó para explorar.
Fontes
- Rossi, P. E., Allenby, G. M., & McCulloch, R. (2005). Bayesian Statistics and Marketing. John Wiley & Sons. ISBN: 9780470863671
- Guadagni, P. M., & Little, J. D. C. (1983). A Logit Model of Brand Choice Calibrated on Scanner Data. Marketing Science, 2(3), 203-238. DOI: 10.1287/mksc.2.3.203 ↗
Como citar esta página
ScholarGate. (2026, June 23). Hierarchical Bayes (HB) Choice Models for Individual-Level Partworths. ScholarGate. https://scholargate.app/pt/marketing/hierarchical-bayes-choice-model
Qual método?
Coloque este método ao lado dos seus pares mais próximos e leia-os lado a lado — a biblioteca dispõe os livros sobre a mesa; a escolha é sua.
- Consideration-Set ModelMarketing↔ comparar
- Nested Logit Brand ChoiceMarketing↔ comparar
- Scanner Panel AnalysisMarketing↔ comparar
Referenciado por
Métodos semelhantes
Encontrou um problema nesta página? Relate ou sugira uma correção →