Spike-Based Bayesian-Hebbian Learning of Temporal Sequences

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Spike-Based Bayesian-Hebbian Learning of Temporal Sequences. / Tully, Philip J; Lindén, Henrik; Hennig, Matthias H; Lansner, Anders.

I: PLoS Computational Biology, Bind 12, Nr. 5, e1004954, 05.2016.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Tully, PJ, Lindén, H, Hennig, MH & Lansner, A 2016, 'Spike-Based Bayesian-Hebbian Learning of Temporal Sequences', PLoS Computational Biology, bind 12, nr. 5, e1004954. https://doi.org/10.1371/journal.pcbi.1004954

APA

Tully, P. J., Lindén, H., Hennig, M. H., & Lansner, A. (2016). Spike-Based Bayesian-Hebbian Learning of Temporal Sequences. PLoS Computational Biology, 12(5), [e1004954]. https://doi.org/10.1371/journal.pcbi.1004954

Vancouver

Tully PJ, Lindén H, Hennig MH, Lansner A. Spike-Based Bayesian-Hebbian Learning of Temporal Sequences. PLoS Computational Biology. 2016 maj;12(5). e1004954. https://doi.org/10.1371/journal.pcbi.1004954

Author

Tully, Philip J ; Lindén, Henrik ; Hennig, Matthias H ; Lansner, Anders. / Spike-Based Bayesian-Hebbian Learning of Temporal Sequences. I: PLoS Computational Biology. 2016 ; Bind 12, Nr. 5.

Bibtex

@article{5ba364a77d0f4d63b212b66b59ce8fdf,
title = "Spike-Based Bayesian-Hebbian Learning of Temporal Sequences",
abstract = "Many cognitive and motor functions are enabled by the temporal representation and processing of stimuli, but it remains an open issue how neocortical microcircuits can reliably encode and replay such sequences of information. To better understand this, a modular attractor memory network is proposed in which meta-stable sequential attractor transitions are learned through changes to synaptic weights and intrinsic excitabilities via the spike-based Bayesian Confidence Propagation Neural Network (BCPNN) learning rule. We find that the formation of distributed memories, embodied by increased periods of firing in pools of excitatory neurons, together with asymmetrical associations between these distinct network states, can be acquired through plasticity. The model's feasibility is demonstrated using simulations of adaptive exponential integrate-and-fire model neurons (AdEx). We show that the learning and speed of sequence replay depends on a confluence of biophysically relevant parameters including stimulus duration, level of background noise, ratio of synaptic currents, and strengths of short-term depression and adaptation. Moreover, sequence elements are shown to flexibly participate multiple times in the sequence, suggesting that spiking attractor networks of this type can support an efficient combinatorial code. The model provides a principled approach towards understanding how multiple interacting plasticity mechanisms can coordinate hetero-associative learning in unison.",
author = "Tully, {Philip J} and Henrik Lind{\'e}n and Hennig, {Matthias H} and Anders Lansner",
year = "2016",
month = may,
doi = "10.1371/journal.pcbi.1004954",
language = "English",
volume = "12",
journal = "P L o S Computational Biology (Online)",
issn = "1553-734X",
publisher = "Public Library of Science",
number = "5",

}

RIS

TY - JOUR

T1 - Spike-Based Bayesian-Hebbian Learning of Temporal Sequences

AU - Tully, Philip J

AU - Lindén, Henrik

AU - Hennig, Matthias H

AU - Lansner, Anders

PY - 2016/5

Y1 - 2016/5

N2 - Many cognitive and motor functions are enabled by the temporal representation and processing of stimuli, but it remains an open issue how neocortical microcircuits can reliably encode and replay such sequences of information. To better understand this, a modular attractor memory network is proposed in which meta-stable sequential attractor transitions are learned through changes to synaptic weights and intrinsic excitabilities via the spike-based Bayesian Confidence Propagation Neural Network (BCPNN) learning rule. We find that the formation of distributed memories, embodied by increased periods of firing in pools of excitatory neurons, together with asymmetrical associations between these distinct network states, can be acquired through plasticity. The model's feasibility is demonstrated using simulations of adaptive exponential integrate-and-fire model neurons (AdEx). We show that the learning and speed of sequence replay depends on a confluence of biophysically relevant parameters including stimulus duration, level of background noise, ratio of synaptic currents, and strengths of short-term depression and adaptation. Moreover, sequence elements are shown to flexibly participate multiple times in the sequence, suggesting that spiking attractor networks of this type can support an efficient combinatorial code. The model provides a principled approach towards understanding how multiple interacting plasticity mechanisms can coordinate hetero-associative learning in unison.

AB - Many cognitive and motor functions are enabled by the temporal representation and processing of stimuli, but it remains an open issue how neocortical microcircuits can reliably encode and replay such sequences of information. To better understand this, a modular attractor memory network is proposed in which meta-stable sequential attractor transitions are learned through changes to synaptic weights and intrinsic excitabilities via the spike-based Bayesian Confidence Propagation Neural Network (BCPNN) learning rule. We find that the formation of distributed memories, embodied by increased periods of firing in pools of excitatory neurons, together with asymmetrical associations between these distinct network states, can be acquired through plasticity. The model's feasibility is demonstrated using simulations of adaptive exponential integrate-and-fire model neurons (AdEx). We show that the learning and speed of sequence replay depends on a confluence of biophysically relevant parameters including stimulus duration, level of background noise, ratio of synaptic currents, and strengths of short-term depression and adaptation. Moreover, sequence elements are shown to flexibly participate multiple times in the sequence, suggesting that spiking attractor networks of this type can support an efficient combinatorial code. The model provides a principled approach towards understanding how multiple interacting plasticity mechanisms can coordinate hetero-associative learning in unison.

U2 - 10.1371/journal.pcbi.1004954

DO - 10.1371/journal.pcbi.1004954

M3 - Journal article

C2 - 27213810

VL - 12

JO - P L o S Computational Biology (Online)

JF - P L o S Computational Biology (Online)

SN - 1553-734X

IS - 5

M1 - e1004954

ER -

ID: 167747584