Joint Segmentation on Distinct Interdependent Bases with Categorical Data
提出一个联合潜在分割模型,同时处理两个概念不同但可能相互依赖的分割基础(如利益诉求与产品使用),通过EM算法估计参数,实证和模拟表明该模型能更准确检测基础间的依赖结构。
The authors discuss a latent class framework for market segmentation with categorical data on two conceptually distinct but possibly interdependent bases for segmentation (e.g., benefits sought and usage of products and services). The joint latent segmentation model explicitly considers potential interdependence between the bases at the segment level by specifying the joint distribution of latent classes over the two bases, while simultaneously extracting segments on each distinct basis. An EM algorithm is used to estimate the model parameters. The authors present an empirical application, using pick-any data collected by a regional bank on two popular, conceptually appealing, and interdependent bases for segmenting customers of financial services—benefits (i.e., desired financial goals) and product usage (of an array of banking services). A comparative evaluation of the approach on synthetic data demonstrates the ability of the modeling framework to detect and estimate the interdependence structure underlying the two segmentation bases and thereby provide more accurate segmentation than “traditional” (single-basis) latent segmentation methods.