International audienceMixtures of probabilistic principal component analyzers (MPPCA) have shown effective for modeling high-dimensional data sets living on nonlinear manifolds. Briefly stated, they conduct mixture model estimation and dimensionality reduction through a single process. This paper makes two contributions: first, we disclose a Bayesian technique for estimating such mixture models. Then, assuming several MPPCA models are available, we address the problem of aggregating them into a single MPPCA model, which should be as parsimonious as possible. We disclose in detail how this can be achieved in a cost-effective way, without sampling nor access to data, but solely requiring mixture parameters. The proposed approach is based on a...
Principal component analysis, when formulated as a probabilistic model, can be made robust to outlie...
Mixtures of probabilistic principal component analysis (MPPCA) is a well-known mixture model extensi...
Part 1: Full Keynote and Invited PapersInternational audienceClassical Principal Components Analysis...
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 audienceAggregating statistical representations of classes is an important task for cu...
International audienceThis paper addresses merging of Gaussian mixture models, which answers growing...
International audienceThis paper proposes a technique for simplifying a given Gaussian mixture model...
Principal component analysis (PCA) is one of the most popular techniques for processing, compressing...
Summary. Exponential principal component analysis (e-PCA) provides a frame-work for appropriately de...
Mixtures of probabilistic principal component analyzers model high-dimensional nonlinear data by com...
Inferring a probability density function (pdf) for shape from a population of point sets is a challe...
Discovering low-dimensional (nonlinear) manifolds is an important problem in Machine Learning. In ma...
A central issue in principal component analysis (PCA) is that of choosing the appropriate number of ...
High dimensional spaces pose a serious challenge to the learning process. It is a combination of lim...
Principal component analysis, when formulated as a probabilistic model, can be made robust to outlie...
Mixtures of probabilistic principal component analysis (MPPCA) is a well-known mixture model extensi...
Part 1: Full Keynote and Invited PapersInternational audienceClassical Principal Components Analysis...
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 audienceAggregating statistical representations of classes is an important task for cu...
International audienceThis paper addresses merging of Gaussian mixture models, which answers growing...
International audienceThis paper proposes a technique for simplifying a given Gaussian mixture model...
Principal component analysis (PCA) is one of the most popular techniques for processing, compressing...
Summary. Exponential principal component analysis (e-PCA) provides a frame-work for appropriately de...
Mixtures of probabilistic principal component analyzers model high-dimensional nonlinear data by com...
Inferring a probability density function (pdf) for shape from a population of point sets is a challe...
Discovering low-dimensional (nonlinear) manifolds is an important problem in Machine Learning. In ma...
A central issue in principal component analysis (PCA) is that of choosing the appropriate number of ...
High dimensional spaces pose a serious challenge to the learning process. It is a combination of lim...
Principal component analysis, when formulated as a probabilistic model, can be made robust to outlie...
Mixtures of probabilistic principal component analysis (MPPCA) is a well-known mixture model extensi...
Part 1: Full Keynote and Invited PapersInternational audienceClassical Principal Components Analysis...