Quantitative Understanding of PDF Fits and their Uncertainties
Amedeo Chiefa, Luigi Del Debbio, Richard Kenway

TL;DR
This paper develops a theoretical framework using Neural Tangent Kernel to analyze neural network training dynamics in PDF fits, providing insights into uncertainty propagation and robustness of the fitting process.
Contribution
It introduces an analytical approach based on NTK to understand neural network training and uncertainty evolution in PDF determinations.
Findings
Provides a quantitative description of neural network training dynamics.
Clarifies the impact of architecture and data on uncertainties.
Offers a diagnostic tool for assessing PDF fitting robustness.
Abstract
Parton Distribution Functions (PDFs) play a central role in describing experimental data at colliders and provide insight into the structure of nucleons. As the LHC enters an era of high-precision measurements, a robust PDF determination with a reliable uncertainty quantification has become mandatory in order to match the experimental precision. The NNPDF collaboration has pioneered the use of Machine Learning (ML) techniques for PDF determinations, using Neural Networks (NNs) to parametrise the unknown PDFs in a flexible and unbiased way. The NNs are then trained on experimental data by means of stochastic gradient descent algorithms. The statistical robustness of the results is validated by extensive closure tests using synthetic data. In this work, we develop a theoretical framework based on the Neural Tangent Kernel (NTK) to analyse the training dynamics of neural networks. This…
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Taxonomy
TopicsParticle physics theoretical and experimental studies · Quantum Chromodynamics and Particle Interactions · High-Energy Particle Collisions Research
