从亚马逊到苹果:建模在线零售销售额、购买发生和访问行为

From Amazon to Apple: Modeling Online Retail Sales, Purchase Incidence, and Visit Behavior

Journal of Business & Economic Statistics · 2013
被引 17
人大 AABS 4

中文导读

提出一个多变量随机模型,整合网站访问时长、页面浏览、购买发生和销售额,用于预测在线零售销售,并通过贝叶斯方法处理消费者异质性,在多个网站验证中优于传统方法。

Abstract

In this study, we propose a multivariate stochastic model for Web site visit duration, page views, purchase incidence, and the sale amount for online retailers. The model is constructed by composition from carefully selected distributions and involves copula components. It allows for the strong nonlinear relationships between the sales and visit variables to be explored in detail, and can be used to construct sales predictions. The model is readily estimated using maximum likelihood, making it an attractive choice in practice given the large sample sizes that are commonplace in online retail studies. We examine a number of top-ranked U.S. online retailers, and find that the visit duration and the number of pages viewed are both related to sales, but in very different ways for different products. Using Bayesian methodology, we show how the model can be extended to a finite mixture model to account for consumer heterogeneity via latent household segmentation. The model can also be adjusted to accommodate a more accurate analysis of online retailers like apple.com that sell products at a very limited number of price points. In a validation study across a range of different Web sites, we find that the purchase incidence and sales amount are both forecast more accurately using our model, when compared to regression, probit regression, a popular data-mining method, and a survival model employed previously in an online retail study. Supplementary materials for this article are available online.

在线零售销售购买行为访问行为随机模型