In this paper we consider the optimisation of Shannon mutual information (MI) in the context of two model neural systems The first is a stochastic pooling network (population) of McCulloch-Pitts (MP) type neurons (logical threshold units) subject to stochastic forcing; the second is (in a rate coding paradigm) a population of neurons that each displays Poisson statistics (the so called 'Poisson neuron'). The mutual information is optimised as a function of a parameter that characterises the 'noise level'-in the MP array this parameter is the standard deviation of the noise, in the population of Poisson neurons it is the window length used to determine the spike count. In both systems we find that the emergent neural architecture and; hence,...
We have investigated how optimal coding for neural systems changes with the time available for decod...
A simple expression for a lower bound of Fisher information is derived for a network of recurrently ...
The sigmoidal tuning curve that maximizes the mutual information for a Poisson neuron, or population...
We define a stochastic neuron as an element that increases its internal state with probability p unt...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
The way brain networks maintain high transmission efficiency is believed to be fundamental in unders...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
A central issue in computational neuroscience is to answer why neural systems can process informatio...
© 2006 COPYRIGHT SPIE--The International Society for Optical Engineering.Pooling networks of noisy t...
According to the classical efficient-coding hypothesis, biological neurons are naturally adapted to ...
While the relationship between information theoretic and Fisher-based measures in the limit of infin...
In this dissertation we study tuning curves that maximize the mutual information in a multi-dimensio...
In the context of parameter estimation and model selection, it is only quite recently that a direct ...
In the context of parameter estimation and model selection, it is only quite recently that a direct ...
The goal of neural processing assemblies is varied, and in many cases still rather unclear. However,...
We have investigated how optimal coding for neural systems changes with the time available for decod...
A simple expression for a lower bound of Fisher information is derived for a network of recurrently ...
The sigmoidal tuning curve that maximizes the mutual information for a Poisson neuron, or population...
We define a stochastic neuron as an element that increases its internal state with probability p unt...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
The way brain networks maintain high transmission efficiency is believed to be fundamental in unders...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
A central issue in computational neuroscience is to answer why neural systems can process informatio...
© 2006 COPYRIGHT SPIE--The International Society for Optical Engineering.Pooling networks of noisy t...
According to the classical efficient-coding hypothesis, biological neurons are naturally adapted to ...
While the relationship between information theoretic and Fisher-based measures in the limit of infin...
In this dissertation we study tuning curves that maximize the mutual information in a multi-dimensio...
In the context of parameter estimation and model selection, it is only quite recently that a direct ...
In the context of parameter estimation and model selection, it is only quite recently that a direct ...
The goal of neural processing assemblies is varied, and in many cases still rather unclear. However,...
We have investigated how optimal coding for neural systems changes with the time available for decod...
A simple expression for a lower bound of Fisher information is derived for a network of recurrently ...
The sigmoidal tuning curve that maximizes the mutual information for a Poisson neuron, or population...