Heterogeneity in Neuronal Dynamics Is Learned by Gradient Descent for Temporal Processing Tasks.


Journal

Neural computation
ISSN: 1530-888X
Titre abrégé: Neural Comput
Pays: United States
ID NLM: 9426182

Informations de publication

Date de publication:
18 03 2023
Historique:
received: 19 01 2022
accepted: 02 11 2022
pubmed: 25 2 2023
medline: 23 3 2023
entrez: 24 2 2023
Statut: ppublish

Résumé

Individual neurons in the brain have complex intrinsic dynamics that are highly diverse. We hypothesize that the complex dynamics produced by networks of complex and heterogeneous neurons may contribute to the brain's ability to process and respond to temporally complex data. To study the role of complex and heterogeneous neuronal dynamics in network computation, we develop a rate-based neuronal model, the generalized-leaky-integrate-and-fire-rate (GLIFR) model, which is a rate equivalent of the generalized-leaky-integrate-and-fire model. The GLIFR model has multiple dynamical mechanisms, which add to the complexity of its activity while maintaining differentiability. We focus on the role of after-spike currents, currents induced or modulated by neuronal spikes, in producing rich temporal dynamics. We use machine learning techniques to learn both synaptic weights and parameters underlying intrinsic dynamics to solve temporal tasks. The GLIFR model allows the use of standard gradient descent techniques rather than surrogate gradient descent, which has been used in spiking neural networks. After establishing the ability to optimize parameters using gradient descent in single neurons, we ask how networks of GLIFR neurons learn and perform on temporally challenging tasks, such as sequential MNIST. We find that these networks learn diverse parameters, which gives rise to diversity in neuronal dynamics, as demonstrated by clustering of neuronal parameters. GLIFR networks have mixed performance when compared to vanilla recurrent neural networks, with higher performance in pixel-by-pixel MNIST but lower in line-by-line MNIST. However, they appear to be more robust to random silencing. We find that the ability to learn heterogeneity and the presence of after-spike currents contribute to these gains in performance. Our work demonstrates both the computational robustness of neuronal complexity and diversity in networks and a feasible method of training such models using exact gradients.

Identifiants

pubmed: 36827598
pii: 114872
doi: 10.1162/neco_a_01571
pmc: PMC10044000
doi:

Types de publication

Journal Article Research Support, N.I.H., Extramural Research Support, Non-U.S. Gov't

Langues

eng

Sous-ensembles de citation

IM

Pagination

555-592

Subventions

Organisme : NIBIB NIH HHS
ID : R01 EB029813
Pays : United States
Organisme : NIDA NIH HHS
ID : RF1 DA055669
Pays : United States

Informations de copyright

© 2023 Massachusetts Institute of Technology.

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Auteurs

Chloe N Winston (CN)

Departments of Neuroscience and Computer Science, University of Washington, Seattle, WA 98195, U.S.A.
University of Washington Computational Neuroscience Center, Seattle, WA 98195, U.S.A. wincnw@gmail.com.

Dana Mastrovito (D)

Allen Institute for Brain Science, Seattle, WA 98109, U.S.A. dana.mastrovito@alleninstitute.org.

Eric Shea-Brown (E)

University of Washington Computational Neuroscience Center, Seattle, WA 98195, U.S.A.
Allen Institute for Brain Science, Seattle, WA 98109, U.S.A.
Department of Applied Mathematics, University of Washington, Seattle, WA 98195, U.S.A. etsb@uw.edu.

Stefan Mihalas (S)

University of Washington Computational Neuroscience Center, Seattle, WA 98195, U.S.A.
Allen Institute for Brain Science, Seattle, WA 98109, U.S.A.
Department of Applied Mathematics, University of Washington, Seattle, WA 98195, U.S.A. stefanm@alleninstitute.org.

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Classifications MeSH