TL;DR
This paper presents a Bayesian method using Nested Sampling for analyzing gravitational wave signals from binary systems, enabling detection, parameter estimation, and discrimination between true signals and noise artifacts across a detector network.
Contribution
It introduces a novel Bayesian inference framework with Nested Sampling for gravitational wave data analysis, including a new coherence test to identify astrophysical signals.
Findings
Effective Bayesian inference for gravitational wave signals
New coherence test distinguishes true signals from noise
Method applicable to various source types
Abstract
The present operation of the ground-based network of gravitational-wave laser interferometers in "enhanced" configuration brings the search for gravitational waves into a regime where detection is highly plausible. The development of techniques that allow us to discriminate a signal of astrophysical origin from instrumental artefacts in the interferometer data and to extract the full range of information are some of the primary goals of the current work. Here we report the details of a Bayesian approach to the problem of inference for gravitational wave observations using a network of instruments, for the computation of the Bayes factor between two hypotheses and the evaluation of the marginalised posterior density functions of the unknown model parameters. The numerical algorithm to tackle the notoriously difficult problem of the evaluation of large multi-dimensional integrals is based…
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