MLSep 17, 2017

Bayesian nonparametric Principal Component Analysis

arXiv:1709.05667v17 citations
Originality Incremental advance
AI Analysis

This addresses a key limitation in PCA for researchers and practitioners by providing a probabilistic, automated alternative to heuristic methods, though it is incremental as it builds on existing Bayesian nonparametric approaches.

The paper tackles the problem of selecting the number of significant components in principal component analysis (PCA) by introducing a Bayesian nonparametric PCA model that infers this number automatically, with results including a new estimator and consistency analysis.

Principal component analysis (PCA) is very popular to perform dimension reduction. The selection of the number of significant components is essential but often based on some practical heuristics depending on the application. Only few works have proposed a probabilistic approach able to infer the number of significant components. To this purpose, this paper introduces a Bayesian nonparametric principal component analysis (BNP-PCA). The proposed model projects observations onto a random orthogonal basis which is assigned a prior distribution defined on the Stiefel manifold. The prior on factor scores involves an Indian buffet process to model the uncertainty related to the number of components. The parameters of interest as well as the nuisance parameters are finally inferred within a fully Bayesian framework via Monte Carlo sampling. A study of the (in-)consistence of the marginal maximum a posteriori estimator of the latent dimension is carried out. A new estimator of the subspace dimension is proposed. Moreover, for sake of statistical significance, a Kolmogorov-Smirnov test based on the posterior distribution of the principal components is used to refine this estimate. The behaviour of the algorithm is first studied on various synthetic examples. Finally, the proposed BNP dimension reduction approach is shown to be easily yet efficiently coupled with clustering or latent factor models within a unique framework.

Foundations

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