TL;DR
This paper introduces a neural network-based waveform analysis method to map and quantify spin parameter correlations in binary black hole mergers, aiding interpretation of gravitational wave data especially for high-mass systems.
Contribution
It presents a novel waveform-based approach using neural networks and Gaussian fitting to identify and quantify spin correlations across the full parameter space.
Findings
Recovered known spin-mass correlations in inspiral-dominated systems.
Identified altered correlation shapes and strengths in merger-dominated signals.
Provided a systematic mapping method for spin effects in gravitational wave signals.
Abstract
The spins of binary black holes measured with gravitational waves provide insights about the formation, evolution, and dynamics of these systems. However, interpreting these measurements-especially for heavy black holes-remains an open problem. While the imprint of spin during the inspiral phase, where the black holes are well-separated, is understood through analytic descriptions of the dynamics, no such expressions exist for the merger. Though numerical relativity simulations provide an exact solution (to within numerical error), the imprint of the full six spin degrees of freedom on the signal is not transparent. In the absence of analytic expressions for the merger and to advance our ability to interpret massive binary black hole spin measurements, here we propose a waveform-based approach. Leveraging a neural network to efficiently calculate mismatches between waveforms, we…
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