Effective Theory Building and Manifold Learning

Authors: David Peter Wallis Freeborn

arXiv: 2411.15975v1 - DOI (physics.hist-ph)
33 pages
License: CC BY 4.0

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.

Submitted to arXiv on 24 Nov. 2024

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