International audienceThis paper proposes a solution to the problem of aggre- gating versatile probabilistic models, namely mixtures of probabilistic principal component analyzers. These models are a powerful generative form for capturing high-dimensional, non Gaussian, data. They simulta- neously perform mixture adjustment and dimensional- ity reduction. We demonstrate how such models may be advantageously aggregated by accessing mixture pa- rameters only, rather than original data. Aggregation is carried out through Bayesian estimation with a specific prior and an original variational scheme. Experimental results illustrate the effectiveness of the proposal
Principal component analysis, when formulated as a probabilistic model, can be made robust to outlie...
This thesis deals with the distributed statistical estimation, with its motivation from, and appli- ...
Mixtures of probabilistic principal component analyzers model high-dimensional nonlinear data by com...
International audienceThis paper proposes a solution to the problem of aggre- gating versatile proba...
Technical Report. This report of an extended version of our ICPR'2010 paper.This paper proposes a te...
International audienceMixtures of probabilistic principal component analyzers (MPPCA) have shown eff...
International audienceThis paper addresses merging of Gaussian mixture models, which answers growing...
International audienceAggregating statistical representations of classes is an important task for cu...
Principal component analysis (PCA) is one of the most popular techniques for processing, compressing...
International audienceThis paper proposes a technique for simplifying a given Gaussian mixture model...
Part 1: Full Keynote and Invited PapersInternational audienceClassical Principal Components Analysis...
Mixtures of probabilistic principal component analyzers model high-dimensional nonlinear data by com...
A central issue in principal component analysis (PCA) is that of choosing the appropriate number of ...
Summary. Exponential principal component analysis (e-PCA) provides a frame-work for appropriately de...
An earlier version of this paper appeared in the Proceedings of the 19th International Conference on...
Principal component analysis, when formulated as a probabilistic model, can be made robust to outlie...
This thesis deals with the distributed statistical estimation, with its motivation from, and appli- ...
Mixtures of probabilistic principal component analyzers model high-dimensional nonlinear data by com...
International audienceThis paper proposes a solution to the problem of aggre- gating versatile proba...
Technical Report. This report of an extended version of our ICPR'2010 paper.This paper proposes a te...
International audienceMixtures of probabilistic principal component analyzers (MPPCA) have shown eff...
International audienceThis paper addresses merging of Gaussian mixture models, which answers growing...
International audienceAggregating statistical representations of classes is an important task for cu...
Principal component analysis (PCA) is one of the most popular techniques for processing, compressing...
International audienceThis paper proposes a technique for simplifying a given Gaussian mixture model...
Part 1: Full Keynote and Invited PapersInternational audienceClassical Principal Components Analysis...
Mixtures of probabilistic principal component analyzers model high-dimensional nonlinear data by com...
A central issue in principal component analysis (PCA) is that of choosing the appropriate number of ...
Summary. Exponential principal component analysis (e-PCA) provides a frame-work for appropriately de...
An earlier version of this paper appeared in the Proceedings of the 19th International Conference on...
Principal component analysis, when formulated as a probabilistic model, can be made robust to outlie...
This thesis deals with the distributed statistical estimation, with its motivation from, and appli- ...
Mixtures of probabilistic principal component analyzers model high-dimensional nonlinear data by com...