Neural network extraction of chromo-electric and chromo-magnetic gluon masses

Abstract

We present a neural network-based quasi-particle model to separate the contributions of chromo-electric and chromo-magnetic gluons. Using dual residual networks, we extract temperature-dependent masses from SU(3) lattice thermodynamic data of pressure and trace anomaly. After incorporating physics regularizations, the trained models reproduce lattice results with high accuracy over T/Tc ∈ [1,10], capturing both the crossover behavior near Tc and linear scaling at high temperatures. The extracted masses exhibit a physically reasonable behavior: they decrease sharply around Tc and increase linearly thereafter. We find significant differences between thermal and screening masses near Tc, reflecting non-perturbative dynamics, while they converge at T 2Tc.

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