Bayesian Mechanics of Synaptic Learning under the Free Energy Principle
The brain is a biological system comprising nerve cells and orchestrates its embodied agent's perception, behavior, and learning in the dynamic environment. The free energy principle (FEP) advocated by Karl Friston explicates the local, recurrent, and self-supervised neurodynamics of the brain&...
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Zusammenfassung: | The brain is a biological system comprising nerve cells and orchestrates its
embodied agent's perception, behavior, and learning in the dynamic environment.
The free energy principle (FEP) advocated by Karl Friston explicates the local,
recurrent, and self-supervised neurodynamics of the brain's higher-order
functions. In this paper, we continue to finesse the FEP through the
physics-guided formulation; specifically, we apply our theory to synaptic
learning by considering it an inference problem under the FEP and derive the
governing equations, called Bayesian mechanics. Our study uncovers how the
brain infers weight change and postsynaptic activity, conditioned on the
presynaptic input, by deploying the generative models of the likelihood and
prior belief. Consequently, we exemplify the synaptic plasticity in the brain
with a simple model: we illustrate that the brain organizes an optimal
trajectory in neural phase space during synaptic learning in continuous time,
which variationally minimizes synaptic surprisal. |
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DOI: | 10.48550/arxiv.2410.02972 |