Hierarchical Bayesian conjoint models incorporating measurement uncertainty

被引:0
|
作者
John C. Liechty
Duncan K. H. Fong
Eelko K. R. E. Huizingh
Arnaud De Bruyn
机构
[1] The Pennsylvania State University,
[2] University of Groningen,undefined
[3] ESSEC Business School,undefined
来源
Marketing Letters | 2008年 / 19卷
关键词
Conjoint analysis; Weighted regression models; Measurement uncertainty; Confidence; Interval data; Hierarchical Bayesian models;
D O I
暂无
中图分类号
学科分类号
摘要
The authors explore situations where consumers supplement their judgments with a measurement of uncertainty about their own preferences, either implicitly or explicitly, and develop two sets of hierarchical Bayesian conjoint models incorporating such measurements. The first set of models uses the relative location of a rating to determine the importance or weight given to the rating, in a regression setting. The second set uses interval judgment as a dependent variable in a regression setting. After specifying the models, the authors perform a theoretical comparison with a basic Bayesian regression model. They show that, under different conditions, the proposed models will yield more precise individual-level partworth estimates. Two simulated data examples and data from a conjoint study are used to illustrate the gains that could be obtained from modeling uncertainty. In the empirical application, the authors show that model fit improves when ratings for items that respondents do not like are given more weight compared to ratings for items that they do like.
引用
收藏
页码:141 / 155
页数:14
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