Independent component analysis (ICA) is a method to estimate components which are as statistically independent as possible. However, in many practical applications, the esti-mated components are not independent. Recent variants of ICA have made use of such residual dependencies to estimate an ordering (topography) of the components. Like in ICA, the components in those variants are assumed to be uncorrelated, which might be a rather strict condition. In this paper, we address this shortcoming. We propose a generative model for the source where the components can have linear and higher order correlations, which generalizes models in use so far. Based on the model, we derive a method to estimate topographic representations. In numerical exper...
The statistical dependencies that independent component analysis (ICA) cannot remove often provide r...
We present an energy-based model that uses a product of generalised Student-t distributions to captu...
Meyer A, Lange O, Wismüller A, Ritter H. Model-Free Function MRI Analysis using Topographic Independ...
A latent variable generative model with finite noise is used to describe several different algorithm...
The statistical dependencies that independent component analysis (ICA) cannot remove often provide r...
The statistical dependencies that independent component analysis (ICA) cannot remove often provide r...
Abstract:- Our contribution highlights the statistical properties and biological interpretation of t...
Independent Components Analysis finds a linear transformation to variables which are maximally stati...
The statistical dependencies which indepen-dent component analysis (ICA) cannot re-move often provid...
<p>The variables and denote the canonical coordinates (feature outputs) of the representations. Hi...
Capturing dependencies in images in an unsupervised manner is important for many image-processing ap...
Using statistical models one can estimate features from natural images, such as images that we see i...
Recently, a new paradigm in ICA emerged, that of finding ldquoclustersrdquo of dependent components....
This paper presents the derivation of an unsupervised learning algorithm, which enables the identifi...
Recently, a new paradigm in ICA emerged, that of finding ldquoclustersrdquo of dependent components....
The statistical dependencies that independent component analysis (ICA) cannot remove often provide r...
We present an energy-based model that uses a product of generalised Student-t distributions to captu...
Meyer A, Lange O, Wismüller A, Ritter H. Model-Free Function MRI Analysis using Topographic Independ...
A latent variable generative model with finite noise is used to describe several different algorithm...
The statistical dependencies that independent component analysis (ICA) cannot remove often provide r...
The statistical dependencies that independent component analysis (ICA) cannot remove often provide r...
Abstract:- Our contribution highlights the statistical properties and biological interpretation of t...
Independent Components Analysis finds a linear transformation to variables which are maximally stati...
The statistical dependencies which indepen-dent component analysis (ICA) cannot re-move often provid...
<p>The variables and denote the canonical coordinates (feature outputs) of the representations. Hi...
Capturing dependencies in images in an unsupervised manner is important for many image-processing ap...
Using statistical models one can estimate features from natural images, such as images that we see i...
Recently, a new paradigm in ICA emerged, that of finding ldquoclustersrdquo of dependent components....
This paper presents the derivation of an unsupervised learning algorithm, which enables the identifi...
Recently, a new paradigm in ICA emerged, that of finding ldquoclustersrdquo of dependent components....
The statistical dependencies that independent component analysis (ICA) cannot remove often provide r...
We present an energy-based model that uses a product of generalised Student-t distributions to captu...
Meyer A, Lange O, Wismüller A, Ritter H. Model-Free Function MRI Analysis using Topographic Independ...