Signal estimation in On/Off measurements including event-by-event variables
Giacomo D'Amico, Tomislav Terzi\'c, Jelena Stri\v{s}kovi\'c, Michele, Doro, Marcel Strzys, Juliane van Scherpenberg

TL;DR
This paper introduces BASiL, a Bayesian method that leverages event-by-event data to improve signal estimation in On/Off measurements, outperforming traditional approaches especially in Cherenkov telescope observations.
Contribution
The paper presents a novel Bayesian reconstruction method, BASiL, which utilizes individual event parameters for more accurate signal estimation without fixed cuts.
Findings
BASiL improves signal estimation accuracy in real data and simulations.
The method effectively suppresses background without losing exposure.
It demonstrates advantages over frequentist approaches in Poissonian problems.
Abstract
Signal estimation in the presence of background noise is a common problem in several scientific disciplines. An 'On/Off' measurement is performed when the background itself is not known, being estimated from a background control sample. The 'frequentist' and Bayesian approaches for signal estimation in On/Off measurements are reviewed and compared, focusing on the weakness of the former and on the advantages of the latter in correctly addressing the Poissonian nature of the problem. In this work, we devise a novel reconstruction method, dubbed BASiL (Bayesian Analysis including Single-event Likelihoods), for estimating the signal rate based on the Bayesian formalism. It uses information on event-by-event individual parameters and their distribution for the signal and background population. Events are thereby weighted according to their likelihood of being a signal or a background event…
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