基于潜在结果方法与贝叶斯推断的品类层面和品牌层面购买动态两阶段建模

Dynamic Two Stage Modeling for Category-Level and Brand-Level Purchases Using Potential Outcome Approach With Bayes Inference

Journal of Business & Economic Statistics · 2019
被引 6
人大 AABS 4

中文导读

提出一个两阶段计量模型,同时分析品类购买和品牌购买,用贝叶斯MCMC估计,能更准确预测品牌选择并揭示现有方法无法捕捉的品牌转换行为。

Abstract

We propose an econometric two-stage model for category-level purchase and brand-level purchase that allows for simultaneous brand purchases in the analysis of scanner panel data. The proposed model formulation is consistent with the traditional theory of consumer behavior. We conduct Bayesian estimation with the Markov chain Monte Carlo algorithm for our proposed model. The simulation studies show that previously proposed related models can cause severe bias in predicting future brand choices, while the proposed method can effectively predict them. Additionally in a marketing application, the proposed method can examine brand switching behaviors that existing methods cannot. Moreover, we show that the prediction accuracy of the proposed method is higher than that of existing methods.

两阶段模型品类购买品牌选择贝叶斯估计