We present a stochastic Bayesian neuron (SBN) that codes for a binary hidden variable and the temporal dynamics of which can be explained as a Bayesian inference. We show that our SBN combines the maximum likelihood of its synaptic inputs and the prior probability of the hidden variable to infer the presence of the hidden variable. Probabilistic models are computationally complex, which makes them difficult to implement using standard state-of-the-art digital implementation. Here, we employ stochastic logic elements to implement the SBN using minimum hardware resources. The SBN could be used as a basic element to develop a Bayesian processor that works on probability instead of deterministic logic
We propose that synapses may be the workhorse of the neuronal computations that underlie probabilist...
Brain-inspired, inherently parallel computation has been proven to excel at tasks where the intrinsi...
Deciphering the working principles of brain function is of major importance from at least two perspe...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
There is growing evidence from psychophysical and neurophysiological studies that the brain utilizes...
Directed acyclic graphs or Bayesian networks that are popular in many AI-related sectors for probabi...
<div><p>It has recently been shown that networks of spiking neurons with noise can emulate simple fo...
The timing of action potentials in spiking neurons depends on the temporal dynamics of their inputs ...
In recent decades, artificial intelligence has been successively employed in the fields of finance, ...
IEEE Hidden Markov models (HMMs) underpin the solution to many problems in computational neuroscienc...
The principles by which networks of neurons compute, and how spike-timing dependent plasticity (STDP...
In this paper, we present the implementation of two types of Bayesian inference problems to demonstr...
Bayesian inference has emerged as a general framework that captures how organisms make decisions und...
[eng] Spiking Neural Networks, the last generation of Artificial Neural Networks, are characterized ...
The brain interprets ambiguous sensory information faster and more reliably than modern computers, u...
We propose that synapses may be the workhorse of the neuronal computations that underlie probabilist...
Brain-inspired, inherently parallel computation has been proven to excel at tasks where the intrinsi...
Deciphering the working principles of brain function is of major importance from at least two perspe...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
There is growing evidence from psychophysical and neurophysiological studies that the brain utilizes...
Directed acyclic graphs or Bayesian networks that are popular in many AI-related sectors for probabi...
<div><p>It has recently been shown that networks of spiking neurons with noise can emulate simple fo...
The timing of action potentials in spiking neurons depends on the temporal dynamics of their inputs ...
In recent decades, artificial intelligence has been successively employed in the fields of finance, ...
IEEE Hidden Markov models (HMMs) underpin the solution to many problems in computational neuroscienc...
The principles by which networks of neurons compute, and how spike-timing dependent plasticity (STDP...
In this paper, we present the implementation of two types of Bayesian inference problems to demonstr...
Bayesian inference has emerged as a general framework that captures how organisms make decisions und...
[eng] Spiking Neural Networks, the last generation of Artificial Neural Networks, are characterized ...
The brain interprets ambiguous sensory information faster and more reliably than modern computers, u...
We propose that synapses may be the workhorse of the neuronal computations that underlie probabilist...
Brain-inspired, inherently parallel computation has been proven to excel at tasks where the intrinsi...
Deciphering the working principles of brain function is of major importance from at least two perspe...