학술논문

A new Machine Learning-based method for identification of time-correlated events at tagged photon facilities
Document Type
Working Paper
Source
JINST 18 P10007 (2023)
Subject
Physics - Data Analysis, Statistics and Probability
Nuclear Experiment
Language
Abstract
We present a new Machine Learning-based multivariate analysis method for the selection of time-correlated hits in the tagging system and devices used to detect particles in the final state at the bremsstrahlung-based tagged photon facilities. This method can be applied instead of the widely used sampling and subtraction of the time-uncorrelated background, in particular at experiments aiming for high precision, where the subtraction of the time-uncorrelated background leads to increased uncertainties. Moreover, the identification of events with Machine Learning algorithms allows to preserve the information about correlations of kinematic variables in the final state, which can be advantageous for further phenomenological analyses of the experimental results.
Comment: 12 pages, 6 figures