A Note on Item Response Theory Modeling for Online Customer Ratings

Citation
Chien-lang Su et al., A Note on Item Response Theory Modeling for Online Customer Ratings, American statistician , 74(1), 2020, pp. 53-63
Journal title
ISSN journal
00031305
Volume
74
Issue
1
Year of publication
2020
Pages
53 - 63
Database
ACNP
SICI code
Abstract
Online consumer product ratings data are increasing rapidly. While most of the current graphical displays mainly represent the average ratings, Ho and Quinn proposed an easily interpretable graphical display based on an ordinal item response theory (IRT) model, which successfully accounts for systematic interrater differences. Conventionally, the discrimination parameters in IRT models are constrained to be positive, particularly in the modeling of scored data from educational tests. In this article, we use real-world ratings data to demonstrate that such a constraint can have a great impact on the parameter estimation. This impact on estimation was explained through rater behavior. We also discuss correlation among raters and assess the prediction accuracy for both the constrained and the unconstrained models. The results show that the unconstrained model performs better when a larger fraction of rater pairs exhibit negative correlations in ratings.