Probabilistic Inference of Binary Markov Random Fields in Spiking Neural Networks through Mean-field Approximation

22 Feb 2019Yajing ZhengShanshan JiaZhaofei YuTiejun HuangJian K. LiuYonghong Tian

Recent studies have suggested that the cognitive process of the human brain is realized as probabilistic inference and can be further modeled by probabilistic graphical models like Markov random fields. Nevertheless, it remains unclear how probabilistic inference can be implemented by a network of spiking neurons in the brain... (read more)

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