Effective Theory Building and Manifold Learning
Abstract
Manifold learning and effective model building are generally viewed as fundamentally different types of procedure. After all, in one we build a simplified model of the data, in the other, we construct a simplified model of the another model. Nonetheless, I argue that certain kinds of high-dimensional effective model building, and effective field theory construction in quantum field theory, can be viewed as special cases of manifold learning. I argue that this helps to shed light on all of these techniques. First, it suggests that the effective model building procedure depends upon a certain kind of algorithmic compressibility requirement. All three approaches assume that real-world systems exhibit certain redundancies, due to regularities. The use of these regularities to build simplified models is essential for scientific progress in many different domains.
Keywords
Cite
@article{arxiv.2411.15975,
title = {Effective Theory Building and Manifold Learning},
author = {David Peter Wallis Freeborn},
journal= {arXiv preprint arXiv:2411.15975},
year = {2024}
}
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33 pages