Improving ANAIS-112 sensitivity to DAMA/LIBRA signal with machine learning techniques
I. Coarasa, J. Apilluelo, J. Amar\'e, S. Cebri\'an, D. Cintas, E., Garc\'ia, M. Mart\'inez, M. A. Oliv\'an, Y. Ortigoza, A. Ortiz de, Sol\'orzano, T. Pardo, J. Puimed\'on, A. Salinas, M. L. Sarsa, P. Villar

TL;DR
This paper enhances the sensitivity of the ANAIS-112 experiment to test the DAMA/LIBRA dark matter signal by applying machine learning techniques, specifically boosted decision trees, to improve event selection and background rejection.
Contribution
It introduces a machine learning-based event filtering method that improves background rejection and detection efficiency in the ANAIS-112 experiment, advancing the search for dark matter signals.
Findings
Background rejection improved in the ROI.
Detection efficiency increased, enhancing sensitivity.
Potential to reach 3σ significance in testing DAMA/LIBRA results.
Abstract
The DAMA/LIBRA observation of an annual modulation in the detection rate compatible with that expected for dark matter particles from the galactic halo has accumulated evidence for more than twenty years. It is the only hint of a direct detection of the elusive dark matter, but it is in strong tension with the negative results of other very sensitive experiments, requiring ad-hoc scenarios to reconcile all the present experimental results. Testing the DAMA/LIBRA result using the same target material, NaI(Tl), removes the dependence on the particle and halo models and is the goal of the ANAIS-112 experiment, taking data at the Canfranc Underground Laboratory in Spain since August 2017 with 112.5 kg of NaI(Tl). At very low energies, the detection rate is dominated by non-bulk scintillation events and careful event selection is mandatory. This article summarizes the efforts devoted to…
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