In bioinformatics it is often desirable to combine data from various measurement sources and thus structured feature vectors are to be analyzed that possess different intrinsic blocking characteristics (e.g., different patterns of missing values, observation noise levels, effective intrinsic dimensionalities). We propose a new machine learning tool, heterogeneous component analysis (HCA), for feature extraction in order to better understand the factors that underlie such complex structured heterogeneous data. HCA is a linear block-wise sparse Bayesian PCA based not only on a probabilistic model with block-wise residual variance terms but also on a Bayesian treatment of a block-wise sparse factor-loading matrix. We study various algorithms t...
International audiencePrincipal component analysis (PCA) is an exploratory tool widely used in data ...
We develop a new component analysis framework, the Noisy-Or Component Analyzer (NOCA), that targets...
In many practical problems for data mining the data X under consideration (given as (m × N)-matrix) ...
The Bayesian approach to feature extraction, known as factor analysis (FA), has been widely studied ...
With the advent of high-throughput measurement techniques, scientists and engineers are starting to ...
<div><p>With the advent of high-throughput measurement techniques, scientists and engineers are star...
Background: A key question when analyzing high throughput data is whether the information provided b...
Abstract Background Sparse principal component analysis (PCA) is a popular tool for dimensionality r...
In many data-driven machine learning problems it is useful to consider the data as generated from a ...
Factor analysis and related models for probabilistic matrix factorisation are of central importance ...
Motivation Genome-wide measurements of genetic and epigenetic alterations are generating more and mo...
In recent years, sparse classification problems have emerged in many fields of study. Finite mixture...
The accumulation of high-throughput data from vast sources has drawn a lot atten-tions to develop me...
We develop a new component analysis framework, the Noisy-Or Component Analyzer (NOCA), that targets...
Modifed principal component analysis techniques, specially those yielding sparse solutions, are attr...
International audiencePrincipal component analysis (PCA) is an exploratory tool widely used in data ...
We develop a new component analysis framework, the Noisy-Or Component Analyzer (NOCA), that targets...
In many practical problems for data mining the data X under consideration (given as (m × N)-matrix) ...
The Bayesian approach to feature extraction, known as factor analysis (FA), has been widely studied ...
With the advent of high-throughput measurement techniques, scientists and engineers are starting to ...
<div><p>With the advent of high-throughput measurement techniques, scientists and engineers are star...
Background: A key question when analyzing high throughput data is whether the information provided b...
Abstract Background Sparse principal component analysis (PCA) is a popular tool for dimensionality r...
In many data-driven machine learning problems it is useful to consider the data as generated from a ...
Factor analysis and related models for probabilistic matrix factorisation are of central importance ...
Motivation Genome-wide measurements of genetic and epigenetic alterations are generating more and mo...
In recent years, sparse classification problems have emerged in many fields of study. Finite mixture...
The accumulation of high-throughput data from vast sources has drawn a lot atten-tions to develop me...
We develop a new component analysis framework, the Noisy-Or Component Analyzer (NOCA), that targets...
Modifed principal component analysis techniques, specially those yielding sparse solutions, are attr...
International audiencePrincipal component analysis (PCA) is an exploratory tool widely used in data ...
We develop a new component analysis framework, the Noisy-Or Component Analyzer (NOCA), that targets...
In many practical problems for data mining the data X under consideration (given as (m × N)-matrix) ...