Literature DB >> 24768299

Learning precisely timed spikes.

Raoul-Martin Memmesheimer1, Ran Rubin2, Bence P Olveczky3, Haim Sompolinsky4.   

Abstract

To signal the onset of salient sensory features or execute well-timed motor sequences, neuronal circuits must transform streams of incoming spike trains into precisely timed firing. To address the efficiency and fidelity with which neurons can perform such computations, we developed a theory to characterize the capacity of feedforward networks to generate desired spike sequences. We find the maximum number of desired output spikes a neuron can implement to be 0.1-0.3 per synapse. We further present a biologically plausible learning rule that allows feedforward and recurrent networks to learn multiple mappings between inputs and desired spike sequences. We apply this framework to reconstruct synaptic weights from spiking activity and study the precision with which the temporal structure of ongoing behavior can be inferred from the spiking of premotor neurons. This work provides a powerful approach for characterizing the computational and learning capacities of single neurons and neuronal circuits.
Copyright © 2014 Elsevier Inc. All rights reserved.

Mesh:

Year:  2014        PMID: 24768299     DOI: 10.1016/j.neuron.2014.03.026

Source DB:  PubMed          Journal:  Neuron        ISSN: 0896-6273            Impact factor:   17.173


  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.  Robust Associative Learning Is Sufficient to Explain the Structural and Dynamical Properties of Local Cortical Circuits.

Authors:  Danke Zhang; Chi Zhang; Armen Stepanyants
Journal:  J Neurosci       Date:  2019-07-03       Impact factor: 6.167

Review 3.  Computational models in the age of large datasets.

Authors:  Timothy O'Leary; Alexander C Sutton; Eve Marder
Journal:  Curr Opin Neurobiol       Date:  2015-01-29       Impact factor: 6.627

4.  Predicting non-linear dynamics by stable local learning in a recurrent spiking neural network.

Authors:  Aditya Gilra; Wulfram Gerstner
Journal:  Elife       Date:  2017-11-27       Impact factor: 8.140

5.  Balanced excitation and inhibition are required for high-capacity, noise-robust neuronal selectivity.

Authors:  Ran Rubin; L F Abbott; Haim Sompolinsky
Journal:  Proc Natl Acad Sci U S A       Date:  2017-10-17       Impact factor: 11.205

6.  Rules and mechanisms for efficient two-stage learning in neural circuits.

Authors:  Tiberiu Teşileanu; Bence Ölveczky; Vijay Balasubramanian
Journal:  Elife       Date:  2017-04-04       Impact factor: 8.140

7.  Delayed motor learning in a 16p11.2 deletion mouse model of autism is rescued by locus coeruleus activation.

Authors:  Xuming Yin; Nathaniel Jones; Jungwoo Yang; Nabil Asraoui; Marie-Eve Mathieu; Liwen Cai; Simon X Chen
Journal:  Nat Neurosci       Date:  2021-03-22       Impact factor: 24.884

8.  Error-based or target-based? A unified framework for learning in recurrent spiking networks.

Authors:  Cristiano Capone; Paolo Muratore; Pier Stanislao Paolucci
Journal:  PLoS Comput Biol       Date:  2022-06-21       Impact factor: 4.779

9.  Reconstruction of recurrent synaptic connectivity of thousands of neurons from simulated spiking activity.

Authors:  Yury V Zaytsev; Abigail Morrison; Moritz Deger
Journal:  J Comput Neurosci       Date:  2015-06-04       Impact factor: 1.621

10.  Efficient "Shotgun" Inference of Neural Connectivity from Highly Sub-sampled Activity Data.

Authors:  Daniel Soudry; Suraj Keshri; Patrick Stinson; Min-Hwan Oh; Garud Iyengar; Liam Paninski
Journal:  PLoS Comput Biol       Date:  2015-10-14       Impact factor: 4.475

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