Double Descent and Overparameterization in Particle Physics Data
High Energy Physics - Experiment
2025-09-03 v1 Machine Learning
High Energy Physics - Phenomenology
Data Analysis, Statistics and Probability
Abstract
Recently, the benefit of heavily overparameterized models has been observed in machine learning tasks: models with enough capacity to easily cross the \emph{interpolation threshold} improve in generalization error compared to the classical bias-variance tradeoff regime. We demonstrate this behavior for the first time in particle physics data and explore when and where `double descent' appears and under which circumstances overparameterization results in a performance gain.
Cite
@article{arxiv.2509.01397,
title = {Double Descent and Overparameterization in Particle Physics Data},
author = {Matthias Vigl and Lukas Heinrich},
journal= {arXiv preprint arXiv:2509.01397},
year = {2025}
}
Comments
4 pages, 3 figures