Bayesian principal component analysis with mixture priors |
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Authors: | Hyun Sook Oh Dai-Gyoung Kim |
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Affiliation: | 1. Department of Applied Statistics, Kyungwon University, Sujung-gu, Sungnam 461-701, Republic of Korea;2. Department of Applied Mathematics, Hanyang University, Sangnok-gu, Ansan 426-791, Republic of Korea |
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Abstract: | A central issue in principal component analysis (PCA) is that of choosing the appropriate number of principal components to be retained. Bishop (1999a) suggested a Bayesian approach for PCA for determining the effective dimensionality automatically on the basis of the probabilistic latent variable model. This paper extends this approach by using mixture priors, in that the choice dimensionality and estimation of principal components are done simultaneously via MCMC algorithm. Also, the proposed method provides a probabilistic measure of uncertainty on PCA, yielding posterior probabilities of all possible cases of principal components. |
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