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Improved γ/hadron separation for the detection of faint gamma-ray sources using boosted decision trees

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arxiv 1701.06928 v1 pith:MP75EULJ submitted 2017-01-24 astro-ph.IM

Improved γ/hadron separation for the detection of faint gamma-ray sources using boosted decision trees

classification astro-ph.IM
keywords gammabackgroundeventsboosteddecisionfainthadronimaging
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Imaging atmospheric Cherenkov telescopes record an enormous number of cosmic-ray background events. Suppressing these background events while retaining $\gamma$-rays is key to achieving good sensitivity to faint $\gamma$-ray sources. The differentiation between signal and background events can be accomplished using machine learning algorithms, which are already used in various fields of physics. Multivariate analyses combine several variables into a single variable that indicates the degree to which an event is $\gamma$-ray-like or cosmic-ray-like. In this paper we will focus on the use of boosted decision trees for $\gamma$/hadron separation. We apply the method to data from the Very Energetic Radiation Imaging Telescope Array System (VERITAS), and demonstrate an improved sensitivity compared to the VERITAS standard analysis.

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Cited by 1 Pith paper

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  1. Enhancing event reconstruction for $\gamma$-ray particle detector arrays using transformers

    astro-ph.IM 2026-04 unverdicted novelty 6.0

    Transformer models applied to simulated water-Cherenkov array data improve gamma-hadron separation and reconstruction of direction, core position, and energy compared to established techniques.