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Robust and scalable simulation-based inference for gravitational wave signals with gaps

R Mao, JE Lee, MC Edwards - arXiv preprint arXiv:2512.18290, 2025 - arxiv.org
Astrophysics paper astro-ph.IM Suggest

… We present a scalable Simulation-Based Inference (SBI) framework capable of robust parameter estimation directly from gapped time-series data. We employ Flow …

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BibTeX

@article{2512.18290v2,
Author = {Ruiting Mao and Jeong Eun Lee and Matthew C. Edwards},
Title = {Robust and scalable simulation-based inference for gravitational wave signals with gaps},
Eprint = {2512.18290v2},
ArchivePrefix = {arXiv},
PrimaryClass = {astro-ph.IM},
Abstract = {The Laser Interferometer Space Antenna (LISA) data stream will inevitably contain gaps due to maintenance and environmental disturbances, introducing nonstationarities and spectral leakage that compromise standard frequency-domain likelihood evaluations. We present a scalable Simulation-Based Inference (SBI) framework capable of robust parameter estimation directly from gapped time-series data. We employ Flow Matching Posterior Estimation (FMPE) conditioned on a learned summary of the data, optimized through an end-to-end training strategy. To address the computational challenges of long-duration signals, we propose a dual-pathway summarizer architecture: a 1D Convolutional Neural Network (CNN) operating on the time domain for high precision, and a novel wavelet-based 2D CNN utilizing asymmetric, dilated kernels to achieve scalability for datasets spanning months. We demonstrate the efficacy of this framework on simulated Galactic Binary-like signals, showing that our joint training approach yields tighter, unbiased posteriors compared to two-stage reconstruction pipelines. Furthermore, we provide the first systematic comparison showing that FMPE offers superior stability and coverage calibration over conventional Normalizing Flows in the presence of severe data artifacts.},
Year = {2025},
Month = {Dec},
Url = {http://arxiv.org/abs/2512.18290v2},
File = {2512.18290v2.pdf}
}

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