Accelerated inference of binary black-hole populations from the stochastic gravitational-wave background


Date

2025-10-03

Publication Type

Journal Article

ETH Bibliography

yes

Citations

Web of Science:
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Data

Abstract

Third-generation ground-based gravitational wave detectors are expected to observe O(10⁵) of overlapping signals per year from a multitude of astrophysical sources that will be computationally challenging to resolve individually. On the other hand, the stochastic background resulting from the entire population of sources encodes information about the underlying population, allowing for population parameter inference independent and complementary to that obtained with individually resolved events. Parameter estimation in this case is still computationally challenging, as computing the power spectrum involves sampling ∼ 10⁵ sources for each set of hyperparameters describing the binary population. In this work, we build on recently developed importance sampling techniques to compute the stochastic gravitational-wave background (SGWB) efficiently and train neural networks to interpolate the resulting background. We show that a multi-layer perceptron can encode the model information, allowing for significantly faster inference. We test the network assuming an observing setup with CE and ET sensitivities, where for the first time we include the intrinsic variance of the SGWB in the inference, as in this setup it presents a dominant source of measurement noise.

Publication status

published

Editor

Book title

Volume

42 (19)

Pages / Article No.

195015

Publisher

IOP Publishing

Event

Edition / version

Methods

Software

Geographic location

Date collected

Date created

Subject

gravitational waves; gravitational wave background; machine learning for physics; black hole binaries populations; deep learning for physics

Organisational unit

09849 - Vallisneri, Michele / Vallisneri, Michele

Notes

Funding

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