A Comparison of Two-Stage Segmentation Methods for Choice-Based Conjoint Data: A Simulation Study

M. Crabbe, B. Jones, M. Vandebroek
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引用次数: 2

Abstract

Due to the increasing interest in market segmentation in modern marketing research, several methods for dealing with consumer heterogeneity and for revealing market segments have been described in the literature.In this study, the authors compare eight two-stage segmentation methods that aim to uncover consumer segments by classifying subject-specific indicator values. Four different indicators are used as a segmentation basis.The forces, which are subject-aggregated gradient values of the likelihood function, and the dfbetas, an outlier detection measure, are two indicators that express a subject’s effect on the estimation of the aggregate partworths in the conditional logit model. Although the conditional logit model is generally estimated at the aggregate level, this research obtains individual-level partworth estimates for segmentation purposes. The respondents’ raw choices are the final indicator values. The authors classify the indicators by means of cluster analysis and latent class models. The goal of the study is to compare the segmentation performance of the methods with respect to their success rate, membership recovery and segment mean parameter recovery. With regard to the individual-level estimates, the authors obtain poor segmentation results both with cluster and latent class analysis. The cluster methods based on the forces, the dfbetas and the choices yield good and similar results. Classification of the forces and the dfbetas deteriorates with the use of latent class analysis, whereas latent class modeling of the choices outperforms its cluster counterpart.
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基于选择的联合数据两阶段分割方法的比较:仿真研究
由于在现代市场营销研究市场细分的兴趣日益增加,几种方法来处理消费者异质性和揭示市场细分已在文献中描述。在这项研究中,作者比较了八种两阶段的分割方法,旨在通过分类特定主题的指标值来揭示消费者细分。使用四种不同的指标作为分割依据。力是似然函数的主体聚集梯度值,而dfbetas是一种离群值检测措施,它们是表达条件logit模型中主体对聚合部分估计的影响的两个指标。虽然条件logit模型通常在总体水平上进行估计,但本研究获得了用于分割目的的个人水平的partworth估计。被调查者的原始选择是最终的指标值。采用聚类分析和潜在类模型对指标进行分类。本研究的目的是比较这些方法的分割性能,包括它们的成功率、隶属度恢复和分段平均参数恢复。对于个人水平的估计,作者使用聚类和潜在类分析都获得了较差的分割结果。基于力、dfbeta和选择的聚类方法得到了类似的结果。使用潜在类分析,力和dfbeta的分类会恶化,而选择的潜在类建模优于其对应的聚类。
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