International audienceWe prove that maximization of mutual information between the output and the input of a feedforward neural network leads to full redundancy reduction under the following sufficient conditions: (i) the input signal is a (possibly nonlinear) invertible mixture of independent components; (ii) there is no input noise; (iii) the activity of each output neuron is a (possibly) stochastic variable with a probability distribution depending on the stimulus through a deterministic function of the inputs (where both the probability distributions and the functions can be different from neuron to neuron); (iv) optimization of the mutual information is performed over all these deterministic functions. This result extends that obtained...
Bounded rational decision-makers transform sensory input into motor output under limited computation...
We derive a new self-organising learning algorithm which maximises the information transferred in a...
MEng (Computer en Electronic Engineering), North-West University, Potchefstroom CampusThe generalisa...
International audienceWe investigate the consequences of maximizing information transfer in a simple...
We consider a linear, one-layer feedforward neural network performing a coding task. The goal of the...
A simple expression for a lower bound of Fisher information is derived for a network of recurrently ...
The way brain networks maintain high transmission efficiency is believed to be fundamental in unders...
For an array of N summing comparators, each with the same internal noise, how should the set of thre...
A new learning algorithm is derived which performs online stochas-tic gradient ascent in the mutual ...
In this paper we consider the optimisation of Shannon mutual information (MI) in the context of two ...
A new learning algorithm is derived which performs online stochastic gradient ascent in the mutual i...
The present paper1 aims to propose a new type of information-theoretic method to maximize mutual inf...
We define a stochastic neuron as an element that increases its internal state with probability p unt...
© 2006 COPYRIGHT SPIE--The International Society for Optical Engineering.Pooling networks of noisy t...
© SPIE--the International Society for Optical EngineeringFor an array of N summing comparators, each...
Bounded rational decision-makers transform sensory input into motor output under limited computation...
We derive a new self-organising learning algorithm which maximises the information transferred in a...
MEng (Computer en Electronic Engineering), North-West University, Potchefstroom CampusThe generalisa...
International audienceWe investigate the consequences of maximizing information transfer in a simple...
We consider a linear, one-layer feedforward neural network performing a coding task. The goal of the...
A simple expression for a lower bound of Fisher information is derived for a network of recurrently ...
The way brain networks maintain high transmission efficiency is believed to be fundamental in unders...
For an array of N summing comparators, each with the same internal noise, how should the set of thre...
A new learning algorithm is derived which performs online stochas-tic gradient ascent in the mutual ...
In this paper we consider the optimisation of Shannon mutual information (MI) in the context of two ...
A new learning algorithm is derived which performs online stochastic gradient ascent in the mutual i...
The present paper1 aims to propose a new type of information-theoretic method to maximize mutual inf...
We define a stochastic neuron as an element that increases its internal state with probability p unt...
© 2006 COPYRIGHT SPIE--The International Society for Optical Engineering.Pooling networks of noisy t...
© SPIE--the International Society for Optical EngineeringFor an array of N summing comparators, each...
Bounded rational decision-makers transform sensory input into motor output under limited computation...
We derive a new self-organising learning algorithm which maximises the information transferred in a...
MEng (Computer en Electronic Engineering), North-West University, Potchefstroom CampusThe generalisa...