Litcius/Paper detail

Empirically estimating the distribution of the loudest candidate from a gravitational-wave search

R. Tenorio, L. M. Modafferi, D. Keitel, A. M. Sintes

2022Physical review. D/Physical review. D.24 citationsDOIOpen Access PDF

Abstract

Searches for gravitational-wave signals are often based on maximizing a detection statistic over a bank of waveform templates, covering a given parameter space with a variable level of correlation. Results are often evaluated using a noise-hypothesis test, where the background is characterized by the sampling distribution of the loudest template. In the context of continuous gravitational-wave searches, properly describing said distribution is an open problem: current approaches focus on a particular detection statistic and neglect template-bank correlations. We introduce a new approach using extreme value theory to describe the distribution of the loudest template's detection statistic in an arbitrary template bank. Our new proposal automatically generalizes to a wider class of detection statistics, including (but not limited to) line-robust statistics and transient continuous-wave signal hypotheses, and improves the estimation of the expected maximum detection statistic at a negligible computing cost. The performance of our proposal is demonstrated on simulated data as well as by applying it to different kinds of (transient) continuous-wave searches using O2 Advanced LIGO data. We release an accompanying python software package, distromax, implementing our new developments.

Topics & Concepts

StatisticComputer scienceTest statisticLIGOGravitational waveStatistical hypothesis testingPython (programming language)AlgorithmData miningStatisticsPhysicsMathematicsAstrophysicsOperating systemPulsars and Gravitational Waves ResearchSeismic Imaging and Inversion TechniquesGamma-ray bursts and supernovae