VarP-GP: cost-efficient Bayesian emulation of quark-gluon plasma modeling with variable statistical precision
R. Ehlers, Y. Ji, P. M. Jacobs, S. Mak

TL;DR
VarP-GP is a Bayesian emulator that efficiently combines simulation data of varying precision to accurately model quark-gluon plasma phenomena, reducing computational costs and enabling advanced data calibration.
Contribution
It introduces a novel Bayesian emulator that leverages variable-precision simulation data, improving emulation accuracy and efficiency over traditional methods.
Findings
Marked reduction in emulator uncertainty at fixed cost
Knowledge of parameter space contours is more crucial than detailed design points
Enables multi-model and multi-observable calibration of QGP data
Abstract
We present VarP-GP, a new cost-efficient Bayesian emulator for expensive computational models with variable statistical precision. We focus on the interpretation of measurements of the quark-gluon plasma (QGP) generated in high-energy nuclear collisions, through comparison to numerical models using Bayesian Inference. Such inference calculations are computationally expensive and require surrogate model emulation, which is commonly implemented using Machine Learning (ML)--based Gaussian processes (GPs). Emulator training data are generated by Monte Carlo simulations whose numerical precision depends on the computational resources utilized; improved precision entails greater computational cost. This study utilizes JETSCAPE simulations of inclusive hadron and jet measurements in nuclear collisions at RHIC and the LHC. The VarP-GP emulator combines information from multiple simulation runs…
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Taxonomy
TopicsHigh-Energy Particle Collisions Research · Particle physics theoretical and experimental studies · Gaussian Processes and Bayesian Inference
