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arxiv: 1703.02834 · v2 · pith:RHUHFVLXnew · submitted 2017-03-08 · 📊 stat.ME · math.ST· stat.ML· stat.TH

Exact Dimensionality Selection for Bayesian PCA

classification 📊 stat.ME math.STstat.MLstat.TH
keywords bayesiandimensionalityselectionapproachexactlikelihoodmarginalmodel
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We present a Bayesian model selection approach to estimate the intrinsic dimensionality of a high-dimensional dataset. To this end, we introduce a novel formulation of the probabilisitic principal component analysis model based on a normal-gamma prior distribution. In this context, we exhibit a closed-form expression of the marginal likelihood which allows to infer an optimal number of components. We also propose a heuristic based on the expected shape of the marginal likelihood curve in order to choose the hyperparameters. In non-asymptotic frameworks, we show on simulated data that this exact dimensionality selection approach is competitive with both Bayesian and frequentist state-of-the-art methods.

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