A Latent Class Unfolding Model for Analyzing Single Stimulus Preference Ratings
- 1 December 1993
- journal article
- Published by Cambridge University Press (CUP) in Psychometrika
- Vol. 58 (4) , 545-565
- https://doi.org/10.1007/bf02294826
Abstract
A multidimensional unfolding model is developed that assumes that the subjects can be clustered into a small number of homogeneous groups or classes. The subjects that belong to the same group are represented by a single ideal point. Since it is not known in advance to which group or class a subject belongs, a mixture distribution model is formulated that can be considered as a latent class model for continuous single stimulus preference ratings. A GEM algorithm is described for estimating the parameters in the model. The M-step of the algorithm is based on a majorization procedure for updating the estimates of the spatial model parameters. A strategy for selecting the appropriate number of classes and the appropriate number of dimensions is proposed and fully illustrated on some artificial data. The latent class unfolding model is applied to political science data concerning party preferences from members of the Dutch Parliament. Finally, some possible extensions of the model are discussed.Keywords
This publication has 19 references indexed in Scilit:
- A latent class vector model for preference ratingsJournal of Classification, 1993
- A Thurstonian Pairwise Choice Model with Univariate and Multivariate Spline TransformationsPsychometrika, 1993
- A Generalized Majorization Method for Least Squares Multidimensional Scaling of Pseudodistances that may be NegativePsychometrika, 1991
- A latent class probit model for analyzing pick any/N dataJournal of Classification, 1991
- A Latent Class Approach to Modeling Pairwise Preferential Choice DataPublished by Springer Nature ,1990
- Order Invariant Unfolding Analysis Under Smoothness RestrictionsPublished by Elsevier ,1989
- Convergence of the majorization method for multidimensional scalingJournal of Classification, 1988
- Joint Ordination of Species and Sites: The Unfolding TechniquePublished by Springer Nature ,1987
- Candelinc: A General Approach to Multidimensional Analysis of Many-Way Arrays with Linear Constraints on ParametersPsychometrika, 1980
- Three Multivariate Models: Factor Analysis, Latent Structure Analysis, and Latent Profile AnalysisPsychometrika, 1959