학술논문

Calomplification -- The Power of Generative Calorimeter Models
Document Type
Working Paper
Source
JINST 17 P09028 (2022)
Subject
High Energy Physics - Phenomenology
High Energy Physics - Experiment
Language
Abstract
Motivated by the high computational costs of classical simulations, machine-learned generative models can be extremely useful in particle physics and elsewhere. They become especially attractive when surrogate models can efficiently learn the underlying distribution, such that a generated sample outperforms a training sample of limited size. This kind of GANplification has been observed for simple Gaussian models. We show the same effect for a physics simulation, specifically photon showers in an electromagnetic calorimeter.
Comment: 17 pages, 10 figures