An increasing number of experimental studies indicate that perception encodes a posterior probability distribution over possible causes of sensory stimuli, which is used to act close to optimally in the environment. One outstanding difficulty with this hypothesis is that the exact posterior will in general be too complex to be represented directly, and thus neurons will have to represent an approximation of this distribution. Two influential proposals of efficient posterior representation by neural populations are: 1) neural activity represents samples of the underly-ing distribution, or 2) they represent a parametric representation of a variational approximation of the posterior. We show that these approaches can be combined for an inferen...
The brain must make inferences about, and decisions concerning, a highly complex and unpredictable w...
Multiple lines of evidence support the notion that the brain performs probabilistic inference in mul...
We present Sequential Neural Variational Inference (SNVI), an approach to perform Bayesian inference...
It is well-established that some aspects of perception and action can be understood as probabilistic...
The human brain effortlessly solves problems that still pose a challenge for modern computers, such ...
Perception is often characterized as an inference process in which the brain unconsciously reasons a...
Information processing in the nervous system involves the activity of large populations of neurons. ...
AbstractThis paper assumes that cortical circuits have evolved to enable inference about the causes ...
In the vertebrate nervous system, sensory stimuli are typically encoded through the concerted activi...
textabstractIn this paper we show some further experiments with neural network sampling, a class of ...
There are now numerous demonstrations that different sources of sensory information contribute to a ...
A common challenge for Bayesian models of perception is the fact that the two fundamental Bayesian c...
With the advent of modern stimulation techniques in neuroscience, the oppor-tunity arises to map neu...
How the brain makes correct inferences about its environment based on noisy and ambiguous observatio...
There is growing evidence that humans and animals represent the uncertainty associated with sensory ...
The brain must make inferences about, and decisions concerning, a highly complex and unpredictable w...
Multiple lines of evidence support the notion that the brain performs probabilistic inference in mul...
We present Sequential Neural Variational Inference (SNVI), an approach to perform Bayesian inference...
It is well-established that some aspects of perception and action can be understood as probabilistic...
The human brain effortlessly solves problems that still pose a challenge for modern computers, such ...
Perception is often characterized as an inference process in which the brain unconsciously reasons a...
Information processing in the nervous system involves the activity of large populations of neurons. ...
AbstractThis paper assumes that cortical circuits have evolved to enable inference about the causes ...
In the vertebrate nervous system, sensory stimuli are typically encoded through the concerted activi...
textabstractIn this paper we show some further experiments with neural network sampling, a class of ...
There are now numerous demonstrations that different sources of sensory information contribute to a ...
A common challenge for Bayesian models of perception is the fact that the two fundamental Bayesian c...
With the advent of modern stimulation techniques in neuroscience, the oppor-tunity arises to map neu...
How the brain makes correct inferences about its environment based on noisy and ambiguous observatio...
There is growing evidence that humans and animals represent the uncertainty associated with sensory ...
The brain must make inferences about, and decisions concerning, a highly complex and unpredictable w...
Multiple lines of evidence support the notion that the brain performs probabilistic inference in mul...
We present Sequential Neural Variational Inference (SNVI), an approach to perform Bayesian inference...