Litcius/Paper detail

Continuous-Mixture Autoregressive Networks Learning the Kosterlitz-Thouless Transition

Lingxiao Wang, Yin Jiang, Lianyi He, Kai Zhou

2022Chinese Physics Letters15 citationsDOIOpen Access PDF

Abstract

We develop deep autoregressive networks with multi channels to compute many-body systems with continuous spin degrees of freedom directly. As a concrete example, we demonstrate the two-dimensional XY model with the continuous-mixture networks and rediscover the Kosterlitz–Thouless (KT) phase transition on a periodic square lattice. Vortices characterizing the quasi-long range order are accurately detected by the generative model. By learning the microscopic probability distributions from the macroscopic thermal distribution, the networks are trained as an efficient physical sampler which can approximate the free energy and estimate thermodynamic observables unbiasedly with importance sampling. As a more precise evaluation, we compute the helicity modulus to determine the KT transition temperature. Although the training process becomes more time-consuming with larger lattice sizes, the training time remains unchanged around the KT transition temperature. The continuous-mixture autoregressive networks we developed thus can be potentially used to study other many-body systems with continuous degrees of freedom.

Topics & Concepts

Autoregressive modelKosterlitz–Thouless transitionStatistical physicsTransition (genetics)SETARSTAR modelPhysicsComputer scienceEconometricsMathematicsCondensed matter physicsTime seriesPhase transitionAutoregressive integrated moving averageMachine learningChemistryBiochemistryGeneNeural Networks and ApplicationsQuantum many-body systemsModel Reduction and Neural Networks