Information-field-based global Bayesian inference of the jet transport coefficient
Man Xie, Weiyao Ke, Han‐Zhong Zhang, Xin-Nian Wang
Abstract
All recent analyses of heavy-ion data that extract information about the transport properties of excited strongly interacting matter use Bayesian techniques to fit parameters of functional forms motivated by physical insight. These explicit parameterizations may introduce undesired long-range correlations between different regions of parameter space. This paper develops an information field approach to avoid an explicit functional parameterization and obtain a global Bayesian inference of the jet transport coefficient $\stackrel{\ifmmode \hat{}\else \^{}\fi{}}{q}$ as a function of the temperature.
Topics & Concepts
InferenceJet (fluid)Field (mathematics)Bayesian probabilityBayesian inferenceStatistical physicsComputer scienceEconometricsMathematicsPhysicsMechanicsArtificial intelligencePure mathematicsAerodynamics and Acoustics in Jet FlowsComputational Fluid Dynamics and AerodynamicsGas Dynamics and Kinetic Theory