International audienceWe 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
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
31 pages, 7 figuresWe discuss the problem of estimating the number of principal components in Princi...
31 pages, 7 figuresWe discuss the problem of estimating the number of principal components in Princi...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
Recently, the technique of principal component analysis (PCA) has been expressed as the maximum like...
Recently, the technique of principal component analysis (PCA) has been expressed as the maximum like...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
Principal component analysis (PCA) is a widely used model for dimensionality reduction. In this pape...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
31 pages, 7 figuresWe discuss the problem of estimating the number of principal components in Princi...
31 pages, 7 figuresWe discuss the problem of estimating the number of principal components in Princi...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
Recently, the technique of principal component analysis (PCA) has been expressed as the maximum like...
Recently, the technique of principal component analysis (PCA) has been expressed as the maximum like...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
Principal component analysis (PCA) is a widely used model for dimensionality reduction. In this pape...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
31 pages, 7 figuresWe discuss the problem of estimating the number of principal components in Princi...
31 pages, 7 figuresWe discuss the problem of estimating the number of principal components in Princi...