Precise learning curves and higher-order scaling limits for dot-product kernel regression
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Published:2023-11-01
Issue:11
Volume:2023
Page:114005
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ISSN:1742-5468
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Container-title:Journal of Statistical Mechanics: Theory and Experiment
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language:
-
Short-container-title:J. Stat. Mech.
Author:
Xiao Lechao,Hu Hong,Misiakiewicz Theodor,Lu Yue M,Pennington Jeffrey
Abstract
Abstract
As modern machine learning models continue to advance the computational frontier, it has become increasingly important to develop precise estimates for expected performance improvements under different model and data scaling regimes. Currently, theoretical understanding of the learning curves (LCs) that characterize how the prediction error depends on the number of samples is restricted to either large-sample asymptotics (
m
→
∞
) or, for certain simple data distributions, to the high-dimensional asymptotics in which the number of samples scales linearly with the dimension (
m
∝
d
). There is a wide gulf between these two regimes, including all higher-order scaling relations
m
∝
d
r
, which are the subject of the present paper. We focus on the problem of kernel ridge regression for dot-product kernels and present precise formulas for the mean of the test error, bias and variance, for data drawn uniformly from the sphere with isotropic random labels in the rth-order asymptotic scaling regime
m
→
∞
with
m
/
d
r
held constant. We observe a peak in the LC whenever
m
≈
d
r
/
r
!
for any integer r, leading to multiple sample-wise descent and non-trivial behavior at multiple scales. We include a colab (available at: https://tinyurl.com/2nzym7ym) notebook that reproduces the essential results of the paper.
Subject
Statistics, Probability and Uncertainty,Statistics and Probability,Statistical and Nonlinear Physics
Reference43 articles.
1. The neural tangent kernel in high dimensions: triple descent and a multi-scale theory of generalization;Adlam,2020
2. Understanding double descent requires a fine-grained bias-variance decomposition;Adlam,2020
3. High-dimensional dynamics of generalization error in neural networks;Advani;Neural Netw.,2020
4. On exact computation with an infinitely wide neural net;Arora,2019
5. Large sample covariance matrices without independence structures in columns;Bai;Stat. Sin.,2008