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Statistically-informed deep learning for gravitational wave parameter estimation

Abstract

We introduce deep learning models to estimate the masses of the binary components of black hole mergers, (m1,m2)(m_1,m_2), and three astrophysical properties of the post-merger compact remnant, namely, the final spin, afa_f, and the frequency and damping time of the ringdown oscillations of the fundamental =m=2\ell=m=2 bar mode, (ωR,ωI)(\omega_R, \omega_I). Our neural networks combine a modified WaveNet\texttt{WaveNet} architecture with contrastive learning and normalizing flow. We validate these models against a Gaussian conjugate prior family whose posterior distribution is described by a closed analytical expression. Upon confirming that our models produce statistically consistent results, we used them to estimate the astrophysical parameters (m1,m2,af,ωR,ωI)(m_1,m_2, a_f, \omega_R, \omega_I) of five binary black holes: GW150914,GW170104,GW170814,GW190521\texttt{GW150914}, \texttt{GW170104}, \texttt{GW170814}, \texttt{GW190521} and GW190630\texttt{GW190630}. We use PyCBC Inference\texttt{PyCBC Inference} to directly compare traditional Bayesian methodologies for parameter estimation with our deep-learning-based posterior distributions. Our results show that our neural network models predict posterior distributions that encode physical correlations, and that our data-driven median results and 90%\% confidence intervals are similar to those produced with gravitational wave Bayesian analyses. This methodology requires a single V100 NVIDIA\texttt{NVIDIA} GPU to produce median values and posterior distributions within two milliseconds for each event. This neural network, and a tutorial for its use, are available at the Data and Learning Hub for Science\texttt{Data and Learning Hub for Science}.

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