A Variational Latent Equilibrium for Learning in Neuronal Circuits
Simon Brandt, Paul Haider, Walter Senn, Federico Benitez, Mihai A. Petrovici

TL;DR
This paper introduces a biologically plausible framework for approximating backpropagation through time in neuronal circuits, unifying previous approaches and providing a basis for spatiotemporal deep learning in the brain.
Contribution
It develops a formalism based on energy conservation principles to derive local, real-time learning equations that approximate BPTT in neuronal networks.
Findings
Provides a derivation of the adjoint method for neuronal networks.
Introduces a local, real-time set of equations for neuron and synapse dynamics.
Extends the Generalized Latent Equilibrium model for spatiotemporal learning.
Abstract
Brains remain unrivaled in their ability to recognize and generate complex spatiotemporal patterns. While AI is able to reproduce some of these capabilities, deep learning algorithms remain largely at odds with our current understanding of brain circuitry and dynamics. This is prominently the case for backpropagation through time (BPTT), the go-to algorithm for learning complex temporal dependencies. In this work we propose a general formalism to approximate BPTT in a controlled, biologically plausible manner. Our approach builds on, unifies and extends several previous approaches to local, time-continuous, phase-free spatiotemporal credit assignment based on principles of energy conservation and extremal action. Our starting point is a prospective energy function of neuronal states, from which we calculate real-time error dynamics for time-continuous neuronal networks. In the general…
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Taxonomy
TopicsNeural dynamics and brain function · Functional Brain Connectivity Studies · Advanced Memory and Neural Computing
