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Probabilistic Disjoint Principal Component Analysis
Authors:Carla Ferrara  Francesca Martella  Maurizio Vichi
Institution:Department of Statistical Sciences, Sapienza University of Rome, Rome, Italy
Abstract:One of the most relevant problems in principal component analysis and factor analysis is the interpretation of the components/factors. In this paper, disjoint principal component analysis model is extended in a maximum-likelihood framework to allow for inference on the model parameters. A coordinate ascent algorithm is proposed to estimate the model parameters. The performance of the methodology is evaluated on simulated and real data sets.
Keywords:Probabilistic model  partition of variables  maximum-likelihood estimation
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