| Literature DB >> 27519687 |
Laura Bocci1, Maurizio Vichi2.
Abstract
A weighted Euclidean distance model for analyzing three-way dissimilarity data (stimuli by stimuli by subjects) for heterogeneous subjects is proposed. First, it is shown that INDSCAL may fail to identify a common space representative of the observed data structure in presence of heterogeneity. A new model that removes the rotational invariance of the classical multidimensional scaling problem and specifies K common homogeneous spaces is proposed. The model, called mixture INDSCAL in K classes, or briefly K-INDSCAL, still includes individual saliencies. However, the large number of parameters in K-INDSCAL may produce instability of the estimates and therefore a parsimonious model will also be discussed. The parameters of the model are estimated in a least-squares fitting context and an efficient coordinate descent algorithm is given. The usefulness of K-INDSCAL is demonstrated by both artificial and real data analyses.Keywords: INDSCAL; heterogeneous dissimilarities data; mixture of INDSCAL models; three-way dissimilarity data
Year: 2011 PMID: 27519687 DOI: 10.1007/s11336-011-9225-5
Source DB: PubMed Journal: Psychometrika ISSN: 0033-3123 Impact factor: 2.500