Affiliation:
1. SNOLAB, Lively, ON P3Y 1M3, Canada
Abstract
In addition to classical analytical data processing methods, machine learning methods are widely used for data analysis in elementary particle physics. Most often, such techniques are used to identify a particular class of events (the classification problem) or to predict a certain event parameter (the regression problem). Here, we present the result of using a machine learning model to solve the regression problem of event position reconstruction in the DEAP-3600 dark matter search detector. A neural network was used as a machine learning model. Improving the position resolution will improve the reduction in background events, while increasing the signal acceptance for weakly interacting massive particles.
Funder
Natural Sciences and Engineering Research Council of Canada
Fundación Marcos Moshinsky
UK Science and Technology Facilities Council
Leverhulme Trust
Russian Science Foundation
Spanish Ministry of Science and Innovation
Community of Madrid
Foundation for Polish Science
Subject
General Physics and Astronomy
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