The world is stochastic and chaotic, and organisms have access to limited information to take decisions. For this reason, brains are continuously required to deal with probability distributions, and experimental evidence confirms that they are dealing with these distributions optimally or close to optimally, according to the rules of Bayesian probability theory. Yet, a complete understanding of how these computations are implemented at the neural level is still missing. We assume that the “computational” goal of neurons is to perform Bayesian inference and to represent the state of the world efficiently. Starting from this assumption, we derive from first principles two distinct models of neural functioning, one in single neuron and one in ...
Despite the recent success of deep learning, the mammalian brain is still unrivaled when it comes t...
Bayesian inference has emerged as a general framework that captures how organisms make decisions und...
non-peer-reviewedWe describe a Bayesian inference scheme for quantifying the active physiology of ne...
The principles by which networks of neurons compute, and how spike-timing dependent plasticity (STDP...
<div><p>It has recently been shown that networks of spiking neurons with noise can emulate simple fo...
The principles by which networks of neurons compute, and how spike-timing dependent plasticity (STDP...
Deciphering the working principles of brain function is of major importance from at least two perspe...
Neuroscience has always been an attractive and mysterious subject. In the last years the studies on ...
During the last decade, Bayesian probability theory has emerged as a framework in cognitive science ...
As the end of Moore’s law nears and the energy demand for computing increases the search for alterna...
The brain is a very complex system in the strong sense. It features a huge amount of individual cell...
Neuroscience is entering an exciting new age. Modern recording technologies enable simultaneous meas...
Learning and memory operations in neural circuits are believed to involve molecular cascades of syna...
Trial-to-trial variability is an ubiquitous characteristic in neural firing patterns and is often r...
Information processing in the nervous system involves the activity of large populations of neurons. ...
Despite the recent success of deep learning, the mammalian brain is still unrivaled when it comes t...
Bayesian inference has emerged as a general framework that captures how organisms make decisions und...
non-peer-reviewedWe describe a Bayesian inference scheme for quantifying the active physiology of ne...
The principles by which networks of neurons compute, and how spike-timing dependent plasticity (STDP...
<div><p>It has recently been shown that networks of spiking neurons with noise can emulate simple fo...
The principles by which networks of neurons compute, and how spike-timing dependent plasticity (STDP...
Deciphering the working principles of brain function is of major importance from at least two perspe...
Neuroscience has always been an attractive and mysterious subject. In the last years the studies on ...
During the last decade, Bayesian probability theory has emerged as a framework in cognitive science ...
As the end of Moore’s law nears and the energy demand for computing increases the search for alterna...
The brain is a very complex system in the strong sense. It features a huge amount of individual cell...
Neuroscience is entering an exciting new age. Modern recording technologies enable simultaneous meas...
Learning and memory operations in neural circuits are believed to involve molecular cascades of syna...
Trial-to-trial variability is an ubiquitous characteristic in neural firing patterns and is often r...
Information processing in the nervous system involves the activity of large populations of neurons. ...
Despite the recent success of deep learning, the mammalian brain is still unrivaled when it comes t...
Bayesian inference has emerged as a general framework that captures how organisms make decisions und...
non-peer-reviewedWe describe a Bayesian inference scheme for quantifying the active physiology of ne...