Back to Search Start Over

Cell-type–specific neuromodulation guides synaptic credit assignment in a spiking neural network

Authors :
Yuhan Helena Liu
Stephen Smith
Stefan Mihalas
Eric Shea-Brown
Uygar Sümbül
Source :
Proceedings of the National Academy of Sciences of the United States of America
Publication Year :
2021
Publisher :
Proceedings of the National Academy of Sciences, 2021.

Abstract

Significance Synaptic connectivity provides the foundation for our present understanding of neuronal network function, but static connectivity cannot explain learning and memory. We propose a computational role for the diversity of cortical neuronal types and their associated cell-type–specific neuromodulators in improving the efficiency of synaptic weight adjustments for task learning in neuronal networks.<br />Brains learn tasks via experience-driven differential adjustment of their myriad individual synaptic connections, but the mechanisms that target appropriate adjustment to particular connections remain deeply enigmatic. While Hebbian synaptic plasticity, synaptic eligibility traces, and top-down feedback signals surely contribute to solving this synaptic credit-assignment problem, alone, they appear to be insufficient. Inspired by new genetic perspectives on neuronal signaling architectures, here, we present a normative theory for synaptic learning, where we predict that neurons communicate their contribution to the learning outcome to nearby neurons via cell-type–specific local neuromodulation. Computational tests suggest that neuron-type diversity and neuron-type–specific local neuromodulation may be critical pieces of the biological credit-assignment puzzle. They also suggest algorithms for improved artificial neural network learning efficiency.

Details

ISSN :
10916490 and 00278424
Volume :
118
Database :
OpenAIRE
Journal :
Proceedings of the National Academy of Sciences
Accession number :
edsair.doi.dedup.....ac50621a315f3bde72a444c8b1cafd58