A compound memristive synapse model for statistical learning through STDP in spiking neural networks

Memristors have recently emerged as promising circuit elements to mimic the function of biological synapses in neuromorphic computing. The fabrication of reliable nanoscale memristive synapses, that feature continuous conductance changes based on the timing of pre- and postsynaptic spikes, has howev...

Full description

Bibliographic Details
Main Authors: Johannes eBill, Robert eLegenstein
Format: Article
Language:English
Published: Frontiers Media S.A. 2014-12-01
Series:Frontiers in Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fnins.2014.00412/full
id doaj-2930526b36dd48d4a63509450a76a72a
record_format Article
spelling doaj-2930526b36dd48d4a63509450a76a72a2020-11-24T22:31:54ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2014-12-01810.3389/fnins.2014.00412120754A compound memristive synapse model for statistical learning through STDP in spiking neural networksJohannes eBill0Robert eLegenstein1Graz University of TechnologyGraz University of TechnologyMemristors have recently emerged as promising circuit elements to mimic the function of biological synapses in neuromorphic computing. The fabrication of reliable nanoscale memristive synapses, that feature continuous conductance changes based on the timing of pre- and postsynaptic spikes, has however turned out to be challenging. In this article, we propose an alternative approach, the compound memristive synapse, that circumvents this problem by the use of memristors with binary memristive states. A compound memristive synapse employs multiple bistable memristors in parallel to jointly form one synapse, thereby providing a spectrum of synaptic efficacies. We investigate the computational implications of synaptic plasticity in the compound synapse by integrating the recently observed phenomenon of stochastic filament formation into an abstract model of stochastic switching. Using this abstract model, we first show how standard pulsing schemes give rise to spike-timing dependent plasticity (STDP) with a stabilizing weight dependence in compound synapses. In a next step, we study unsupervised learning with compound synapses in networks of spiking neurons organized in a winner-take-all architecture. Our theoretical analysis reveals that compound-synapse STDP implements generalized Expectation-Maximization in the spiking network. Specifically, the emergent synapse configuration represents the most salient features of the input distribution in a Mixture-of-Gaussians generative model. Furthermore, the network’s spike response to spiking input streams approximates a well-defined Bayesian posterior distribution. We show in computer simulations how such networks learn to represent high-dimensional distributions over images of handwritten digits with high fidelity even in presence of substantial device variations and under severe noise conditions. Therefore, the compound memristive synapse may provide a synaptic design principle for future neuromorphic architectures.http://journal.frontiersin.org/Journal/10.3389/fnins.2014.00412/fullSTDPsynaptic plasticityNeuromorphicsynapseBayesian inferenceMemristor
collection DOAJ
language English
format Article
sources DOAJ
author Johannes eBill
Robert eLegenstein
spellingShingle Johannes eBill
Robert eLegenstein
A compound memristive synapse model for statistical learning through STDP in spiking neural networks
Frontiers in Neuroscience
STDP
synaptic plasticity
Neuromorphic
synapse
Bayesian inference
Memristor
author_facet Johannes eBill
Robert eLegenstein
author_sort Johannes eBill
title A compound memristive synapse model for statistical learning through STDP in spiking neural networks
title_short A compound memristive synapse model for statistical learning through STDP in spiking neural networks
title_full A compound memristive synapse model for statistical learning through STDP in spiking neural networks
title_fullStr A compound memristive synapse model for statistical learning through STDP in spiking neural networks
title_full_unstemmed A compound memristive synapse model for statistical learning through STDP in spiking neural networks
title_sort compound memristive synapse model for statistical learning through stdp in spiking neural networks
publisher Frontiers Media S.A.
series Frontiers in Neuroscience
issn 1662-453X
publishDate 2014-12-01
description Memristors have recently emerged as promising circuit elements to mimic the function of biological synapses in neuromorphic computing. The fabrication of reliable nanoscale memristive synapses, that feature continuous conductance changes based on the timing of pre- and postsynaptic spikes, has however turned out to be challenging. In this article, we propose an alternative approach, the compound memristive synapse, that circumvents this problem by the use of memristors with binary memristive states. A compound memristive synapse employs multiple bistable memristors in parallel to jointly form one synapse, thereby providing a spectrum of synaptic efficacies. We investigate the computational implications of synaptic plasticity in the compound synapse by integrating the recently observed phenomenon of stochastic filament formation into an abstract model of stochastic switching. Using this abstract model, we first show how standard pulsing schemes give rise to spike-timing dependent plasticity (STDP) with a stabilizing weight dependence in compound synapses. In a next step, we study unsupervised learning with compound synapses in networks of spiking neurons organized in a winner-take-all architecture. Our theoretical analysis reveals that compound-synapse STDP implements generalized Expectation-Maximization in the spiking network. Specifically, the emergent synapse configuration represents the most salient features of the input distribution in a Mixture-of-Gaussians generative model. Furthermore, the network’s spike response to spiking input streams approximates a well-defined Bayesian posterior distribution. We show in computer simulations how such networks learn to represent high-dimensional distributions over images of handwritten digits with high fidelity even in presence of substantial device variations and under severe noise conditions. Therefore, the compound memristive synapse may provide a synaptic design principle for future neuromorphic architectures.
topic STDP
synaptic plasticity
Neuromorphic
synapse
Bayesian inference
Memristor
url http://journal.frontiersin.org/Journal/10.3389/fnins.2014.00412/full
work_keys_str_mv AT johannesebill acompoundmemristivesynapsemodelforstatisticallearningthroughstdpinspikingneuralnetworks
AT robertelegenstein acompoundmemristivesynapsemodelforstatisticallearningthroughstdpinspikingneuralnetworks
AT johannesebill compoundmemristivesynapsemodelforstatisticallearningthroughstdpinspikingneuralnetworks
AT robertelegenstein compoundmemristivesynapsemodelforstatisticallearningthroughstdpinspikingneuralnetworks
_version_ 1725735687907442688