Literature DB >> 19842989

Supervised learning in spiking neural networks with ReSuMe: sequence learning, classification, and spike shifting.

Filip Ponulak, Andrzej Kasiński.   

Abstract

Learning from instructions or demonstrations is a fundamental property of our brain necessary to acquire new knowledge and develop novel skills or behavioral patterns. This type of learning is thought to be involved in most of our daily routines. Although the concept of instruction-based learning has been studied for several decades, the exact neural mechanisms implementing this process remain unrevealed. One of the central questions in this regard is, How do neurons learn to reproduce template signals (instructions) encoded in precisely timed sequences of spikes? Here we present a model of supervised learning for biologically plausible neurons that addresses this question. In a set of experiments, we demonstrate that our approach enables us to train spiking neurons to reproduce arbitrary template spike patterns in response to given synaptic stimuli even in the presence of various sources of noise. We show that the learning rule can also be used for decision-making tasks. Neurons can be trained to classify categories of input signals based on only a temporal configuration of spikes. The decision is communicated by emitting precisely timed spike trains associated with given input categories. Trained neurons can perform the classification task correctly even if stimuli and corresponding decision times are temporally separated and the relevant information is consequently highly overlapped by the ongoing neural activity. Finally, we demonstrate that neurons can be trained to reproduce sequences of spikes with a controllable time shift with respect to target templates. A reproduced signal can follow or even precede the targets. This surprising result points out that spiking neurons can potentially be applied to forecast the behavior (firing times) of other reference neurons or networks.

Mesh:

Year:  2010        PMID: 19842989     DOI: 10.1162/neco.2009.11-08-901

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


  28 in total

Review 1.  Building functional networks of spiking model neurons.

Authors:  L F Abbott; Brian DePasquale; Raoul-Martin Memmesheimer
Journal:  Nat Neurosci       Date:  2016-03       Impact factor: 24.884

2.  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

Review 3.  Toward Reflective Spiking Neural Networks Exploiting Memristive Devices.

Authors:  Valeri A Makarov; Sergey A Lobov; Sergey Shchanikov; Alexey Mikhaylov; Viktor B Kazantsev
Journal:  Front Comput Neurosci       Date:  2022-06-16       Impact factor: 3.387

4.  The covariance perceptron: A new paradigm for classification and processing of time series in recurrent neuronal networks.

Authors:  Matthieu Gilson; David Dahmen; Rubén Moreno-Bote; Andrea Insabato; Moritz Helias
Journal:  PLoS Comput Biol       Date:  2020-10-12       Impact factor: 4.475

5.  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

6.  Synthesis of neural networks for spatio-temporal spike pattern recognition and processing.

Authors:  Jonathan C Tapson; Greg K Cohen; Saeed Afshar; Klaus M Stiefel; Yossi Buskila; Runchun Mark Wang; Tara J Hamilton; André van Schaik
Journal:  Front Neurosci       Date:  2013-08-30       Impact factor: 4.677

7.  Supervised Learning in Spiking Neural Networks for Precise Temporal Encoding.

Authors:  Brian Gardner; André Grüning
Journal:  PLoS One       Date:  2016-08-17       Impact factor: 3.240

8.  Learning of Precise Spike Times with Homeostatic Membrane Potential Dependent Synaptic Plasticity.

Authors:  Christian Albers; Maren Westkott; Klaus Pawelzik
Journal:  PLoS One       Date:  2016-02-22       Impact factor: 3.240

9.  Precise-spike-driven synaptic plasticity: learning hetero-association of spatiotemporal spike patterns.

Authors:  Qiang Yu; Huajin Tang; Kay Chen Tan; Haizhou Li
Journal:  PLoS One       Date:  2013-11-05       Impact factor: 3.240

10.  An Efficient Supervised Training Algorithm for Multilayer Spiking Neural Networks.

Authors:  Xiurui Xie; Hong Qu; Guisong Liu; Malu Zhang; Jürgen Kurths
Journal:  PLoS One       Date:  2016-04-04       Impact factor: 3.240

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