What is it about?
Neurons in the brain communicate through spikes that are transmitted via chemical synapses that express both long-term and short-term plasticity. While long-term plasticity is thought to be the central site of learning and memory and has dominated research, its interactions with short-term plasticity, i.e. the dynamics of the molecular transmission machinery, have largely remained unexplored. Using computational models that capture recent electrophysiological data from the mouse and human neocortex, we show that such interactions can greatly affect the learning abilities of neural networks and enable neurons to learn to process temporal sequences of spikes as if they were spatial patterns. This mechanism allows neural circuits to flexibly increase their capacity and robustness by increasing their activity instead of their size.
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Why is it important?
State-of-the-art architectures of artificial neural networks are energetically very expensive. It has been shown previously that spiking neural networks, an alternative architecture that is inspired by biological brains, can operate at vastly lower energy budgets. Our work presents an important advance in the theory of supervised learning in spiking neural networks: We show that spiking neural networks with learnable synaptic dynamics can increase their effective size by elevating the levels of activity rather than the number of connections.
Perspectives
This article highlights the feasibility and power of an understudied computational paradigm for spiking neural networks within which individual synapses learn their individual dynamics.
Robert Gütig
Berlin Institute of Health at Charite Medical School Berlin
Read the Original
This page is a summary of: Interactions between long- and short-term synaptic plasticity transform temporal neural representations into spatial, Proceedings of the National Academy of Sciences, November 2025, Proceedings of the National Academy of Sciences,
DOI: 10.1073/pnas.2426290122.
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