Learning Curve Theory
Machine Learning
2021-02-15 v1 Machine Learning
Abstract
Recently a number of empirical "universal" scaling law papers have been published, most notably by OpenAI. `Scaling laws' refers to power-law decreases of training or test error w.r.t. more data, larger neural networks, and/or more compute. In this work we focus on scaling w.r.t. data size . Theoretical understanding of this phenomenon is largely lacking, except in finite-dimensional models for which error typically decreases with or , where is the sample size. We develop and theoretically analyse the simplest possible (toy) model that can exhibit learning curves for arbitrary power , and determine whether power laws are universal or depend on the data distribution.
Cite
@article{arxiv.2102.04074,
title = {Learning Curve Theory},
author = {Marcus Hutter},
journal= {arXiv preprint arXiv:2102.04074},
year = {2021}
}
Comments
26 pages, 6 Figures