Mixtures of probabilistic principal component analysis (MPPCA) is a well-known mixture model extension of principal component analysis (PCA). Similar to PCA, MPPCA assumes the data samples in each mixture contain homoscedastic noise. However, datasets with heterogeneous noise across samples are becoming increasingly common, as larger datasets are generated by collecting samples from several sources with varying noise profiles. The performance of MPPCA is suboptimal for data with heteroscedastic noise across samples. This paper proposes a heteroscedastic mixtures of probabilistic PCA technique (HeMPPCAT) that uses a generalized expectation-maximization (GEM) algorithm to jointly estimate the unknown underlying factors, means, and noise varia...
Linear latent variable models such as statistical factor analysis (SFA) and probabilistic principal ...
Principal Components Analysis is a standard tool in data analysis, widely used in data-rich fields s...
peer reviewedMixtures of Principal Component Analyzers can be used to model high dimensional data th...
<div><p>To extract information from high-dimensional data efficiently, visualization tools based on ...
Principal component analysis, when formulated as a probabilistic model, can be made robust to outlie...
Principal component analysis (PCA) is one of the most popular techniques for processing, compressing...
International audienceMixtures of probabilistic principal component analyzers (MPPCA) have shown eff...
Mixtures of probabilistic principal component analyzers model high-dimensional nonlinear data by com...
The research on robust principal component analysis (RPCA) has been attracting much atten-tion recen...
International audienceThis paper proposes a solution to the problem of aggre- gating versatile proba...
Mixtures of probabilistic principal component analyzers model high-dimensional nonlinear data by com...
Modern data are increasingly both high-dimensional and heteroscedastic. This paper considers the cha...
Principal component analysis (PCA) is a key tool in the field of data dimensionality reduction that ...
Part 1: Full Keynote and Invited PapersInternational audienceClassical Principal Components Analysis...
31st International Conference on Machine Learning, ICML 2014, Beijing, 21-26 June 2014The research o...
Linear latent variable models such as statistical factor analysis (SFA) and probabilistic principal ...
Principal Components Analysis is a standard tool in data analysis, widely used in data-rich fields s...
peer reviewedMixtures of Principal Component Analyzers can be used to model high dimensional data th...
<div><p>To extract information from high-dimensional data efficiently, visualization tools based on ...
Principal component analysis, when formulated as a probabilistic model, can be made robust to outlie...
Principal component analysis (PCA) is one of the most popular techniques for processing, compressing...
International audienceMixtures of probabilistic principal component analyzers (MPPCA) have shown eff...
Mixtures of probabilistic principal component analyzers model high-dimensional nonlinear data by com...
The research on robust principal component analysis (RPCA) has been attracting much atten-tion recen...
International audienceThis paper proposes a solution to the problem of aggre- gating versatile proba...
Mixtures of probabilistic principal component analyzers model high-dimensional nonlinear data by com...
Modern data are increasingly both high-dimensional and heteroscedastic. This paper considers the cha...
Principal component analysis (PCA) is a key tool in the field of data dimensionality reduction that ...
Part 1: Full Keynote and Invited PapersInternational audienceClassical Principal Components Analysis...
31st International Conference on Machine Learning, ICML 2014, Beijing, 21-26 June 2014The research o...
Linear latent variable models such as statistical factor analysis (SFA) and probabilistic principal ...
Principal Components Analysis is a standard tool in data analysis, widely used in data-rich fields s...
peer reviewedMixtures of Principal Component Analyzers can be used to model high dimensional data th...