TASI Lectures on Physics for Machine Learning
High Energy Physics - Theory
2024-08-02 v1 Machine Learning
High Energy Physics - Phenomenology
Abstract
These notes are based on lectures I gave at TASI 2024 on Physics for Machine Learning. The focus is on neural network theory, organized according to network expressivity, statistics, and dynamics. I present classic results such as the universal approximation theorem and neural network / Gaussian process correspondence, and also more recent results such as the neural tangent kernel, feature learning with the maximal update parameterization, and Kolmogorov-Arnold networks. The exposition on neural network theory emphasizes a field theoretic perspective familiar to theoretical physicists. I elaborate on connections between the two, including a neural network approach to field theory.
Keywords
Cite
@article{arxiv.2408.00082,
title = {TASI Lectures on Physics for Machine Learning},
author = {Jim Halverson},
journal= {arXiv preprint arXiv:2408.00082},
year = {2024}
}
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26 pages