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arxiv: 1506.00185 · v2 · submitted 2015-05-31 · 🌀 gr-qc · physics.data-an· stat.AP

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Bayesian semiparametric power spectral density estimation with applications in gravitational wave data analysis

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classification 🌀 gr-qc physics.data-anstat.AP
keywords datanoiseanalysisapproachbayesiandensitygravitationalpower
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The standard noise model in gravitational wave (GW) data analysis assumes detector noise is stationary and Gaussian distributed, with a known power spectral density (PSD) that is usually estimated using clean off-source data. Real GW data often depart from these assumptions, and misspecified parametric models of the PSD could result in misleading inferences. We propose a Bayesian semiparametric approach to improve this. We use a nonparametric Bernstein polynomial prior on the PSD, with weights attained via a Dirichlet process distribution, and update this using the Whittle likelihood. Posterior samples are obtained using a blocked Metropolis-within-Gibbs sampler. We simultaneously estimate the reconstruction parameters of a rotating core collapse supernova GW burst that has been embedded in simulated Advanced LIGO noise. We also discuss an approach to deal with non-stationary data by breaking longer data streams into smaller and locally stationary components.

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