International audiencePrincipal component analysis is a widely used technique to perform dimension reduction. However, selecting a finite number of significant components is essential and remains a crucial issue. Only few attempts have proposed a probabilistic approach to adaptively select this number. This paper introduces a Bayesian nonparametric model to jointly estimate the principal components and the corresponding intrinsic dimension. More precisely, the observations are projected onto a random orthogonal basis which is assigned a prior distribution defined on the Stiefel manifold. Then the factor scores take benefit of an Indian buffet process prior to model the uncertainty related to the number of components. The parameters of inter...
Sufficient dimension reduction with logistic Gaussian process priors have been used successfully in ...
<p>We propose nonparametric Bayesian models for supervised dimension</p><p>reduction and regression ...
We propose nonparametric Bayesian models for supervised dimension reduction and regression problems....
Principal component analysis is a widely used technique to perform dimension reduction. However, sel...
This thesis proposes Bayesian parametric and nonparametric models for signal representation. The fir...
Recently, the technique of principal component analysis (PCA) has been expressed as the maximum like...
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...
A Bayesian approach to the classification problem is proposed in which random partitions play a cent...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
Cette thèse étudie deux modèles paramétriques et non paramétriques pour le changement de représentat...
31 pages, 7 figuresWe discuss the problem of estimating the number of principal components in Princi...
A central issue in principal component analysis (PCA) is that of choosing the appropriate number of ...
International audienceIn numerous applications, it is required to estimate the principal subspace of...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
Sufficient dimension reduction with logistic Gaussian process priors have been used successfully in ...
<p>We propose nonparametric Bayesian models for supervised dimension</p><p>reduction and regression ...
We propose nonparametric Bayesian models for supervised dimension reduction and regression problems....
Principal component analysis is a widely used technique to perform dimension reduction. However, sel...
This thesis proposes Bayesian parametric and nonparametric models for signal representation. The fir...
Recently, the technique of principal component analysis (PCA) has been expressed as the maximum like...
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...
A Bayesian approach to the classification problem is proposed in which random partitions play a cent...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
Cette thèse étudie deux modèles paramétriques et non paramétriques pour le changement de représentat...
31 pages, 7 figuresWe discuss the problem of estimating the number of principal components in Princi...
A central issue in principal component analysis (PCA) is that of choosing the appropriate number of ...
International audienceIn numerous applications, it is required to estimate the principal subspace of...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
Sufficient dimension reduction with logistic Gaussian process priors have been used successfully in ...
<p>We propose nonparametric Bayesian models for supervised dimension</p><p>reduction and regression ...
We propose nonparametric Bayesian models for supervised dimension reduction and regression problems....