Machine learning Hadron Spectral Functions in Lattice QCD
Shi-Yang Chen, Heng-Tong Ding, Fei-Yi Liu, Gabor Papp, Chun-Bin, Yang

TL;DR
This paper introduces a neural network based on the Variational Auto-Encoder and Bayesian methods to extract hadron spectral functions from lattice QCD data, improving reconstruction especially for sharp peaks.
Contribution
It proposes a novel sVAE neural network that incorporates entropy and likelihood terms for spectral function reconstruction, outperforming traditional methods in certain scenarios.
Findings
sVAE performs comparably or better than MEM in mock tests.
Application to lattice QCD data reveals the dependence of spectral features on lattice parameters.
Larger temporal lattice points are needed to resolve the eta_c resonance at high temperature.
Abstract
Hadron spectral functions carry all the information of hadrons and are encoded in the Euclidean two-point correlation functions. The extraction of hadron spectral functions from the correlator is a typical ill-posed inverse problem and infinite number of solutions to this problem exists. We propose a novel neural network (sVAE) based on the Variation Auto-Encoder (VAE) and Bayesian theorem. Inspired by the maximum entropy method (MEM) we construct the loss function of the neural work such that it includes a Shannon-Jaynes entropy term and a likelihood term. The sVAE is then trained to provide the most probable spectral functions. For the training samples of spectral function we used general spectral functions produced from the Gaussian Mixture Model. After the training is done we performed the mock data tests with input spectral functions consisting 1) only a free continuum, 2) only a…
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Taxonomy
TopicsHigh-Energy Particle Collisions Research · Particle physics theoretical and experimental studies · Quantum Chromodynamics and Particle Interactions
