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arxiv: 1805.12188 · v2 · pith:PEIHHNUDnew · submitted 2018-05-30 · 🌌 astro-ph.IM · astro-ph.CO· gr-qc

Noise-marginalized optimal statistic: A robust hybrid frequentist-Bayesian statistic for the stochastic gravitational-wave background in pulsar timing arrays

classification 🌌 astro-ph.IM astro-ph.COgr-qc
keywords statisticoptimalarraysbackgroundcorrelationsgalaxiesmethodnoise-marginalized
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Observations have revealed that nearly all galaxies contain supermassive black holes (SMBHs) at their centers. When galaxies merge, these SMBHs form SMBH binaries (SMBHBs) that emit low-frequency gravitational waves (GWs). The incoherent superposition of these sources produce a stochastic GW background (GWB) that can be observed by pulsar timing arrays (PTAs). The optimal statistic is a frequentist estimator of the amplitude of the GWB that specifically looks for the spatial correlations between pulsars induced by the GWB. In this paper, we introduce an improved method for computing the optimal statistic that marginalizes over the red noise in individual pulsars. We use simulations to demonstrate that this method more accurately determines the strength of the GWB, and we use the noise-marginalized optimal statistic to compare the significance of monopole, dipole, and Hellings-Downs (HD) spatial correlations and perform sky scrambles.

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  1. Stochastic gravitational-wave background search using data from five pulsar timing arrays

    astro-ph.CO 2025-12 conditional novelty 6.0

    Combined five-PTA dataset yields posterior on SGWB power-law amplitude and index consistent with nonzero signal but below 5-sigma significance, with reconstructed angular correlations matching the Hellings-Downs prediction.