Learning by message-passing in networks of discrete synapses
classification
❄️ cond-mat.dis-nn
cs.LGq-bio.NC
keywords
learningalgorithmmessage-passingnetworkssynapsesallowsalmostapply
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We show that a message-passing process allows to store in binary "material" synapses a number of random patterns which almost saturates the information theoretic bounds. We apply the learning algorithm to networks characterized by a wide range of different connection topologies and of size comparable with that of biological systems (e.g. $n\simeq10^{5}-10^{6}$). The algorithm can be turned into an on-line --fault tolerant-- learning protocol of potential interest in modeling aspects of synaptic plasticity and in building neuromorphic devices.
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