Gravitational-Wave Parameter Estimation in non-Gaussian noise using Score-Based Likelihood Characterization
Ronan Legin, Maximiliano Isi, Kaze W. K. Wong, Yashar Hezaveh, Laurence Perreault-Levasseur

TL;DR
This paper introduces a novel score-based diffusion approach to model non-Gaussian, non-stationary noise in gravitational-wave data, enabling unbiased parameter estimation without data cleaning.
Contribution
It presents a new method that learns the true noise distribution directly from data, avoiding biases from traditional cleaning procedures and improving inference accuracy.
Findings
Method accurately recovers parameters in noisy, glitchy data.
Unbiased inference achieved without data cleaning.
Validated on 400 mock observations with real detector noise.
Abstract
Gravitational-wave (GW) parameter estimation typically assumes that instrumental noise is Gaussian and stationary. Obvious departures from this idealization are typically handled on a case-by-case basis, e.g., through bespoke procedures to ``clean'' non-Gaussian noise transients (glitches), as was famously the case for the GW170817 neutron-star binary. Although effective, manipulating the data in this way can introduce biases in the inference of key astrophysical properties, like binary precession, and compound in unpredictable ways when combining multiple observations; alternative procedures free of the same biases, like joint inference of noise and signal properties, have so far proved too computationally expensive to execute at scale. Here we take a different approach: rather than explicitly modeling individual non-Gaussianities to then apply the traditional GW likelihood, we seek to…
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