Eryn: a multipurpose sampler for Bayesian inference

ABSTRACT In recent years, methods for Bayesian inference have been widely used in many different problems in physics where detection and characterization are necessary. Data analysis in gravitational-wave astronomy is a prime example of such a case. Bayesian inference has been very successful becaus...

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Bibliographic Details
Published inMonthly notices of the Royal Astronomical Society Vol. 526; no. 4; pp. 4814 - 4830
Main Authors Karnesis, Nikolaos, Katz, Michael L, Korsakova, Natalia, Gair, Jonathan R, Stergioulas, Nikolaos
Format Journal Article
LanguageEnglish
Published Oxford University Press 20.10.2023
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Summary:ABSTRACT In recent years, methods for Bayesian inference have been widely used in many different problems in physics where detection and characterization are necessary. Data analysis in gravitational-wave astronomy is a prime example of such a case. Bayesian inference has been very successful because this technique provides a representation of the parameters as a posterior probability distribution, with uncertainties informed by the precision of the experimental measurements. During the last couple of decades, many specific advances have been proposed and employed in order to solve a large variety of different problems. In this work, we present a Markov Chain Monte Carlo (MCMC) algorithm that integrates many of those concepts into a single MCMC package. For this purpose, we have built Eryn, a user-friendly and multipurpose toolbox for Bayesian inference, which can be utilized for solving parameter estimation and model selection problems, ranging from simple inference questions, to those with large-scale model variation requiring trans-dimensional MCMC methods, like the Laser Interferometer Space Antenna Global Fit problem. In this paper, we describe this sampler package and illustrate its capabilities on a variety of use cases.
ISSN:0035-8711
1365-2966
DOI:10.1093/mnras/stad2939