Information theory, the mathematical theory of communication in the presence of noise, is playing an increasingly important role in modern quantitative neuroscience. It makes it possible to treat neural systems as stochastic communication channels and gain valuable, quantitative insights into their sensory coding function. These techniques provide results on how neurons encode stimuli in a way which is independent of any specific assumptions on which part of the neuronal response is signal and which is noise, and they can be usefully applied even to highly non-linear systems where traditional techniques fail. In this article, we describe our work and experiences using Python for information theoretic analysis. We outline some of the algorit...
The major problem in information theoretic analysis of neural responses is the reliable estimation o...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
Methods based on Rate Distortion theory have been successfully used to cluster stimuli and neural re...
Information theory, the mathematical theory of communication in the presence of noise, is playing an...
Understanding how neural systems integrate, encode, and compute information is central to understand...
Information theory is a practical and theoretical framework developed for the study of communication...
Population coding is the quantitative study of which algorithms or representations are used by the b...
The recent and rapid development of open source software tools for the analysis of neurophysiologica...
The overarching purpose of the studies presented in this report is the exploration of the uses of in...
As the ultimate information processing device, the brain naturally lends itself to being studied wit...
It is a common notion in neuroscience research that the brain and neural systems in general "perform...
The overarching purpose of the studies presented in this report is the exploration of the uses of in...
According to the classical efficient-coding hypothesis, biological neurons are naturally adapted to ...
Neurons in the brain face the challenge of representing sensory stimuli in a way that accurately enc...
Many systems in nature process information by transforming inputs from their environments into obser...
The major problem in information theoretic analysis of neural responses is the reliable estimation o...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
Methods based on Rate Distortion theory have been successfully used to cluster stimuli and neural re...
Information theory, the mathematical theory of communication in the presence of noise, is playing an...
Understanding how neural systems integrate, encode, and compute information is central to understand...
Information theory is a practical and theoretical framework developed for the study of communication...
Population coding is the quantitative study of which algorithms or representations are used by the b...
The recent and rapid development of open source software tools for the analysis of neurophysiologica...
The overarching purpose of the studies presented in this report is the exploration of the uses of in...
As the ultimate information processing device, the brain naturally lends itself to being studied wit...
It is a common notion in neuroscience research that the brain and neural systems in general "perform...
The overarching purpose of the studies presented in this report is the exploration of the uses of in...
According to the classical efficient-coding hypothesis, biological neurons are naturally adapted to ...
Neurons in the brain face the challenge of representing sensory stimuli in a way that accurately enc...
Many systems in nature process information by transforming inputs from their environments into obser...
The major problem in information theoretic analysis of neural responses is the reliable estimation o...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
Methods based on Rate Distortion theory have been successfully used to cluster stimuli and neural re...