We propose that synapses may be the workhorse of the neuronal computations that underlie probabilistic reasoning. We built a neural circuit model for probabilistic inference in which information provided by different sensory cues must be integrated and the predictive powers of individual cues about an outcome are deduced through experience. We found that bounded synapses naturally compute, through reward-dependent plasticity, the posterior probability that a choice alternative is correct given that a cue is presented. Furthermore, a decision circuit endowed with such synapses makes choices on the basis of the summed log posterior odds and performs near-optimal cue combination. The model was validated by reproducing salient observations of, ...
Uncertainty is omnipresent when we perceive or interact with our environment, and the Bayesian frame...
To study a cognitive neural model of decision making, we analyzed the neural and behavioral data rec...
Learning, especially rapid learning, is critical for survival. However, learning is hard; a large nu...
We propose that synapses may be the workhorse of the neuronal computations that underlie probabilist...
Recently, there have been growing behavioral evidence that the brain encodes sensory information in ...
Much experimental evidence suggests that during decision making neural circuits accumulate evidence ...
Decision making often requires simultaneously learning about and combining evidence from various sou...
When making a decision, one must first accumulate evidence, often over time, and then select the app...
SummaryWhen making a decision, one must first accumulate evidence, often over time, and then select ...
Optimal binary perceptual decision making requires accumulation of evidence in the form of a probabi...
Bayesian inference has emerged as a general framework that captures how organisms make decisions und...
There is strong behavioral and physiological evidence that the brain both represents probability dis...
<div><p>Decision formation recruits many brain regions, but the procedure they jointly execute is un...
Uncertainty is omnipresent when we perceive or interact with our environment, and the Bayesian frame...
The principles by which networks of neurons compute, and how spike-timing dependent plasticity (STDP...
Uncertainty is omnipresent when we perceive or interact with our environment, and the Bayesian frame...
To study a cognitive neural model of decision making, we analyzed the neural and behavioral data rec...
Learning, especially rapid learning, is critical for survival. However, learning is hard; a large nu...
We propose that synapses may be the workhorse of the neuronal computations that underlie probabilist...
Recently, there have been growing behavioral evidence that the brain encodes sensory information in ...
Much experimental evidence suggests that during decision making neural circuits accumulate evidence ...
Decision making often requires simultaneously learning about and combining evidence from various sou...
When making a decision, one must first accumulate evidence, often over time, and then select the app...
SummaryWhen making a decision, one must first accumulate evidence, often over time, and then select ...
Optimal binary perceptual decision making requires accumulation of evidence in the form of a probabi...
Bayesian inference has emerged as a general framework that captures how organisms make decisions und...
There is strong behavioral and physiological evidence that the brain both represents probability dis...
<div><p>Decision formation recruits many brain regions, but the procedure they jointly execute is un...
Uncertainty is omnipresent when we perceive or interact with our environment, and the Bayesian frame...
The principles by which networks of neurons compute, and how spike-timing dependent plasticity (STDP...
Uncertainty is omnipresent when we perceive or interact with our environment, and the Bayesian frame...
To study a cognitive neural model of decision making, we analyzed the neural and behavioral data rec...
Learning, especially rapid learning, is critical for survival. However, learning is hard; a large nu...