Probabilistic Inference in General Graphical Models with Stochastic Networks of Spiking Neurons
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This paper by Pecevski, Buesing, and Maass (2011) explores a novel approach to probabilistic inference in graphical models through sampling techniques applied to networks of spiking neurons. The authors present a framework that leverages the properties of stochastic spiking networks to efficiently perform inference tasks, highlighting the advantages of implementing neural-like models for complex probability distributions. This work contributes to the understanding of computational mechanisms underlying inference in both biological and artificial neural networks.
Probabilistic Inference in General Graphical Models with Stochastic Networks of Spiking Neurons
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Presentation Transcript
Neural Bayesian Inference Pecevski, Buesing, and Maass, 2011: Probabilistic Inference in General Graphical Models through Sampling in Stochastic Networks of Spiking Neurons