We derive a new self-organising learning algorithm which maximises the information transferred in a network of non-linear units. The algorithm does not assume any knowledge of the input distributions, and is defined here for the zero-noise limit. Under these conditions, information maximisation has extra properties not found in the linear case (1se er 1989). The non-linearities in the transfer function are able to pick up higher-order moments of the input distributions and perform something akin to true redundancy reduction between units in the output representation. This enables the network to separate statistically independent components in the inputs: a higher-order generalisation of Principal Components Analysis. We appl
This paper proposes a method of "blind separation" which extracts non-stationary signals (...
Abstract—A method to perform convolutive blind source sep-aration of super-Gaussian sources by minim...
In blind sourc separation (BSS), two di#erent separation tecration are mainly used: minimal mutual i...
We derive a new self-organising learning algorithm which maximises the information transferred in a ...
A new learning algorithm is derived which performs online stochas-tic gradient ascent in the mutual ...
A new learning algorithm is derived which performs online stochastic gradient ascent in the mutual i...
A new on-line learning algorithm which minimizes a statistical de-pendency among outputs is derived ...
There are two major approaches for blind separation: maximum entropy (ME) and minimum mutual informa...
Blind separation is an information theoretic problem, and we have proposed an information theoretic ...
A nonlinear self-organising neural network is proposed, which employs hierarchic linear negative fee...
The principle of maximizing mutual information is applied to learning overcomplete and recurrent rep...
International audienceIn this work, we deal with nonlinear blind source separation. Our contribution...
Novel on--line learning algorithms with self adaptive learning rates (parameters) for blind separati...
International audienceAbstract-This paper proposes a method of ''blind separation'' which extracts n...
Blind separation and blind deconvolution are related problems in unsupervised learning. In blind sep...
This paper proposes a method of "blind separation" which extracts non-stationary signals (...
Abstract—A method to perform convolutive blind source sep-aration of super-Gaussian sources by minim...
In blind sourc separation (BSS), two di#erent separation tecration are mainly used: minimal mutual i...
We derive a new self-organising learning algorithm which maximises the information transferred in a ...
A new learning algorithm is derived which performs online stochas-tic gradient ascent in the mutual ...
A new learning algorithm is derived which performs online stochastic gradient ascent in the mutual i...
A new on-line learning algorithm which minimizes a statistical de-pendency among outputs is derived ...
There are two major approaches for blind separation: maximum entropy (ME) and minimum mutual informa...
Blind separation is an information theoretic problem, and we have proposed an information theoretic ...
A nonlinear self-organising neural network is proposed, which employs hierarchic linear negative fee...
The principle of maximizing mutual information is applied to learning overcomplete and recurrent rep...
International audienceIn this work, we deal with nonlinear blind source separation. Our contribution...
Novel on--line learning algorithms with self adaptive learning rates (parameters) for blind separati...
International audienceAbstract-This paper proposes a method of ''blind separation'' which extracts n...
Blind separation and blind deconvolution are related problems in unsupervised learning. In blind sep...
This paper proposes a method of "blind separation" which extracts non-stationary signals (...
Abstract—A method to perform convolutive blind source sep-aration of super-Gaussian sources by minim...
In blind sourc separation (BSS), two di#erent separation tecration are mainly used: minimal mutual i...