基于模型的双聚类方法在大规模在线产品评分网络中的客户定位应用

Model-Based Co-Clustering in Customer Targeting Utilizing Large-Scale Online Product Rating Networks

Journal of Business & Economic Statistics · 2024
被引 2
人大 AABS 4

中文导读

针对在线产品评分数据缺失严重的问题,提出一种基于二分网络建模的新双聚类方法,通过结合协变量和序数评分,实现客户和产品的有效聚类,并用于客户定位策略制定。

Abstract

Given the widely available online customer ratings on products, the individual-level rating prediction and clustering of customers and products are increasingly important for sellers to create targeting strategies for expanding the customer base and improving product ratings. However, the massive missing data problem is a significant challenge for modeling online product ratings. To address this issue, we propose a new co-clustering methodology based on a bipartite network modeling of large-scale ordinal product ratings. Our method extends existing co-clustering methods by incorporating covariates and ordinal ratings in the model-based co-clustering of a weighted bipartite network. We devise an efficient variational EM algorithm for model estimation. A simulation study demonstrates that our methodology is scalable for modeling large datasets and provides accurate estimation and clustering results. We further show that our model can successfully identify different groups of customers and products with meaningful interpretations and achieve promising predictive performance in a real application for customer targeting.

协同聚类二分网络序数评分客户定位