Bayesian RG Flow in Neural Network Field Theories
Jessica N. Howard, Marc S. Klinger, Anindita Maiti, Alexander G., Stapleton

TL;DR
This paper unifies neural network field theories with Bayesian renormalization group techniques, providing a new framework to interpret neural network training as a flow in the space of statistical field theories, with analytical and numerical demonstrations.
Contribution
It introduces BRG-NNFT, a novel framework combining NNFT and BRG, to analyze neural network training dynamics as flows in the space of SFTs, connecting to ERG in certain limits.
Findings
BRG-NNFT framework unifies NN training and SFT flows.
Analytic BRG flows constructed for infinite-width neural networks.
Numerical experiments confirm the theoretical BRG coarse-graining process.
Abstract
The Neural Network Field Theory correspondence (NNFT) is a mapping from neural network (NN) architectures into the space of statistical field theories (SFTs). The Bayesian renormalization group (BRG) is an information-theoretic coarse graining scheme that generalizes the principles of the exact renormalization group (ERG) to arbitrarily parameterized probability distributions, including those of NNs. In BRG, coarse graining is performed in parameter space with respect to an information-theoretic distinguishability scale set by the Fisher information metric. In this paper, we unify NNFT and BRG to form a powerful new framework for exploring the space of NNs and SFTs, which we coin BRG-NNFT. With BRG-NNFT, NN training dynamics can be interpreted as inducing a flow in the space of SFTs from the information-theoretic `IR' `UV'. Conversely, applying an information-shell coarse…
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Taxonomy
TopicsNeural Networks and Applications
MethodsSparse Evolutionary Training · Shrink and Fine-Tune
