Literature DB >> 16156932

What can a neuron learn with spike-timing-dependent plasticity?

Robert Legenstein1, Christian Naeger, Wolfgang Maass.   

Abstract

Spiking neurons are very flexible computational modules, which can implement with different values of their adjustable synaptic parameters an enormous variety of different transformations F from input spike trains to output spike trains. We examine in this letter the question to what extent a spiking neuron with biologically realistic models for dynamic synapses can be taught via spike-timing-dependent plasticity (STDP) to implement a given transformation F. We consider a supervised learning paradigm where during training, the output of the neuron is clamped to the target signal (teacher forcing). The well-known perceptron convergence theorem asserts the convergence of a simple supervised learning algorithm for drastically simplified neuron models (McCulloch-Pitts neurons). We show that in contrast to the perceptron convergence theorem, no theoretical guarantee can be given for the convergence of STDP with teacher forcing that holds for arbitrary input spike patterns. On the other hand, we prove that average case versions of the perceptron convergence theorem hold for STDP in the case of uncorrelated and correlated Poisson input spike trains and simple models for spiking neurons. For a wide class of cross-correlation functions of the input spike trains, the resulting necessary and sufficient condition can be formulated in terms of linear separability, analogously as the well-known condition of learnability by perceptrons. However, the linear separability criterion has to be applied here to the columns of the correlation matrix of the Poisson input. We demonstrate through extensive computer simulations that the theoretically predicted convergence of STDP with teacher forcing also holds for more realistic models for neurons, dynamic synapses, and more general input distributions. In addition, we show through computer simulations that these positive learning results hold not only for the common interpretation of STDP, where STDP changes the weights of synapses, but also for a more realistic interpretation suggested by experimental data where STDP modulates the initial release probability of dynamic synapses.

Mesh:

Year:  2005        PMID: 16156932     DOI: 10.1162/0899766054796888

Source DB:  PubMed          Journal:  Neural Comput        ISSN: 0899-7667            Impact factor:   2.026


  24 in total

1.  Perceptron learning rule derived from spike-frequency adaptation and spike-time-dependent plasticity.

Authors:  Prashanth D'Souza; Shih-Chii Liu; Richard H R Hahnloser
Journal:  Proc Natl Acad Sci U S A       Date:  2010-02-18       Impact factor: 11.205

2.  Synaptic consolidation: an approach to long-term learning.

Authors:  Claudia Clopath
Journal:  Cogn Neurodyn       Date:  2011-10-22       Impact factor: 5.082

3.  Connectivity reflects coding: a model of voltage-based STDP with homeostasis.

Authors:  Claudia Clopath; Lars Büsing; Eleni Vasilaki; Wulfram Gerstner
Journal:  Nat Neurosci       Date:  2010-01-24       Impact factor: 24.884

4.  Supervised learning with decision margins in pools of spiking neurons.

Authors:  Charlotte Le Mouel; Kenneth D Harris; Pierre Yger
Journal:  J Comput Neurosci       Date:  2014-05-28       Impact factor: 1.621

5.  Associative memory of phase-coded spatiotemporal patterns in leaky Integrate and Fire networks.

Authors:  Silvia Scarpetta; Ferdinando Giacco
Journal:  J Comput Neurosci       Date:  2012-10-04       Impact factor: 1.621

6.  STDP in Recurrent Neuronal Networks.

Authors:  Matthieu Gilson; Anthony Burkitt; Leo J van Hemmen
Journal:  Front Comput Neurosci       Date:  2010-09-10       Impact factor: 2.380

Review 7.  Phenomenological models of synaptic plasticity based on spike timing.

Authors:  Abigail Morrison; Markus Diesmann; Wulfram Gerstner
Journal:  Biol Cybern       Date:  2008-05-20       Impact factor: 2.086

8.  Hebbian plasticity in parallel synaptic pathways: A circuit mechanism for systems memory consolidation.

Authors:  Michiel W H Remme; Urs Bergmann; Denis Alevi; Susanne Schreiber; Henning Sprekeler; Richard Kempter
Journal:  PLoS Comput Biol       Date:  2021-12-07       Impact factor: 4.475

9.  The chronotron: a neuron that learns to fire temporally precise spike patterns.

Authors:  Răzvan V Florian
Journal:  PLoS One       Date:  2012-08-06       Impact factor: 3.240

10.  On the relation between bursts and dynamic synapse properties: a modulation-based ansatz.

Authors:  Christian Mayr; Johannes Partzsch; Rene Schüffny
Journal:  Comput Intell Neurosci       Date:  2009-06-25
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