The NANOGrav 15-year Data Set: Evidence for a Gravitational-Wave Background
Gabriella Agazie, Akash Anumarlapudi, Anne M. Archibald, Zaven, Arzoumanian, Paul T. Baker, Bence Becsy, Laura Blecha, Adam Brazier, Paul R., Brook, Sarah Burke-Spolaor, Rand Burnette, Robin Case, Maria Charisi, Shami, Chatterjee, Katerina Chatziioannou, Belinda D. Cheeseboro

TL;DR
The paper presents strong evidence for a gravitational-wave background detected through pulsar timing, with correlations matching theoretical predictions, consistent with supermassive black-hole binaries, marking a significant milestone in gravitational wave astronomy.
Contribution
First detection of a gravitational-wave background with Hellings-Downs correlations using 15 years of pulsar data, confirming a stochastic gravitational-wave signal.
Findings
Detection of correlated pulsar timing residuals consistent with gravitational waves
Bayes factor strongly favors gravitational-wave background over noise models
Estimated strain amplitude aligns with supermassive black-hole binary predictions
Abstract
We report multiple lines of evidence for a stochastic signal that is correlated among 67 pulsars from the 15-year pulsar-timing data set collected by the North American Nanohertz Observatory for Gravitational Waves. The correlations follow the Hellings-Downs pattern expected for a stochastic gravitational-wave background. The presence of such a gravitational-wave background with a power-law-spectrum is favored over a model with only independent pulsar noises with a Bayes factor in excess of , and this same model is favored over an uncorrelated common power-law-spectrum model with Bayes factors of 200-1000, depending on spectral modeling choices. We have built a statistical background distribution for these latter Bayes factors using a method that removes inter-pulsar correlations from our data set, finding (approx. ) for the observed Bayes factors in the…
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