Finite mixture partial least squares for segmentation and behavioral characterization of auction bidders

作者:

Highlights:

• We demonstrate how to segment, without a priori knowledge, online bidders using real time data.

• Our model can capture and evaluate bidder behavior and personality.

• FIMIX-PLS is capable of profiling and segmenting the bidders based on their individual characteristics.

• Analysis confirms FIMIX-PLS' ability of segmenting bidders into statistically identifiable homogeneous groups.

摘要

The purpose of this study is to demonstrate how to empirically segment, without a priori knowledge, online auction bidders using experimental data and finite mixture models. The proposed method utilizes a finite mixture partial least squares (FIMIX-PLS) approach to examine bidder behaviors and personality characteristics, evaluate bidder differences, and then segment the bidders. The empirical experiment is conducted for two different auction mechanisms — English and Vickrey. Results from both auction mechanisms indicate that FIMIX-PLS is capable of profiling and segmenting the bidders based on their individual characteristics. The post hoc analysis confirms the segmentation scheme and the capability of FIMIX-PLS in segmenting bidders into statistically identifiable homogeneous groups without a priori information of group characteristics. Such advantage is practical for online businesses dealing with increasing amount of data about their customers on a real time basis.

论文关键词:Segmentation and profiling,Finite mixture partial least squares,Data mining,Electronic commerce,Online auction behaviors

论文评审过程:Received 6 March 2013, Revised 21 August 2013, Accepted 7 September 2013, Available online 17 September 2013.

论文官网地址:https://doi.org/10.1016/j.dss.2013.09.003