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  4. NMDA-driven dendritic modulation enables multitask representation learning in hierarchical sensory processing pathways
 
research article

NMDA-driven dendritic modulation enables multitask representation learning in hierarchical sensory processing pathways

Wybo, Willem A. M.
•
Tsai, Matthias C.
•
Tran, Viet Anh Khoa
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August 8, 2023
Proceedings Of The National Academy Of Sciences Of The United States Of America (PNAS)

While sensory representations in the brain depend on context, it remains unclear how such modulations are implemented at the biophysical level, and how processing layers further in the hierarchy can extract useful features for each possible contex-tual state. Here, we demonstrate that dendritic N-Methyl-D-Aspartate spikes can, within physiological constraints, implement contextual modulation of feedforward processing. Such neuron-specific modulations exploit prior knowledge, encoded in stable feedforward weights, to achieve transfer learning across contexts. In a network of biophysically realistic neuron models with context-independent feedforward weights, we show that modulatory inputs to dendritic branches can solve linearly nonseparable learning problems with a Hebbian, error-modulated learning rule. We also demonstrate that local prediction of whether representations originate either from different inputs, or from different contextual modulations of the same input, results in representation learning of hierarchical feedforward weights across processing layers that accommodate a multitude of contexts.

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Type
research article
DOI
10.1073/pnas.2300558120
Web of Science ID

WOS:001121663700001

Author(s)
Wybo, Willem A. M.
Tsai, Matthias C.
Tran, Viet Anh Khoa
Illing, Bernd Albert  
Jordan, Jakob
Morrison, Abigail
Senn, Walter
Date Issued

2023-08-08

Publisher

National Academy of Sciences

Published in
Proceedings Of The National Academy Of Sciences Of The United States Of America (PNAS)
Volume

120

Issue

32

Article Number

e2300558120

Subjects

Dendritic Computation

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Contextual Adaptation

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Multitask Learning

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Contrastive Learning

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Self-Supervised Learning

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LCN  
FunderGrant Number

Helmholtz Portfolio theme Supercomputing and Modeling for the Human Brain

Excellence Strategy of the Federal Government

Swiss NSF

785907

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Available on Infoscience
February 20, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/204573
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