TY - JOUR
T1 - Fast marginalization algorithm for optimizing gravitational wave detection, parameter estimation, and sky localization
AU - Roulet, Javier
AU - Mushkin, Jonathan
AU - Wadekar, Digvijay
AU - Venumadhav, Tejaswi
AU - Zackay, Barak
AU - Zaldarriaga, Matias
N1 - Publisher Copyright: © 2024 American Physical Society.
PY - 2024/8/15
Y1 - 2024/8/15
N2 - We introduce an algorithm to marginalize the likelihood for a gravitational wave signal from a quasicircular binary merger over its extrinsic parameters, accounting for the effects of higher harmonics and spin-induced precession. The algorithm takes as input the matched-filtering time series of individual waveform harmonics against the data in all operational detectors, and the covariances of the harmonics. The outputs are the Gaussian likelihood marginalized over extrinsic parameters describing the merger time, location and orientation, along with samples from the conditional posterior of these parameters. Our algorithm exploits the waveform's known analytical dependence on extrinsic parameters to efficiently marginalize over them using a single waveform evaluation. Our current implementation achieves a 10% precision on the marginalized likelihood within ≈50 ms on a single CPU core and is publicly available through the package cogwheel. We discuss applications of this tool for (i) gravitational wave searches involving higher modes or precession, (ii) efficient and robust parameter estimation, and (iii) generation of sky localization maps in low latency for electromagnetic followup of gravitational-wave alerts. The inclusion of higher modes can improve the distance measurement, providing an advantage over existing low-latency localization methods.
AB - We introduce an algorithm to marginalize the likelihood for a gravitational wave signal from a quasicircular binary merger over its extrinsic parameters, accounting for the effects of higher harmonics and spin-induced precession. The algorithm takes as input the matched-filtering time series of individual waveform harmonics against the data in all operational detectors, and the covariances of the harmonics. The outputs are the Gaussian likelihood marginalized over extrinsic parameters describing the merger time, location and orientation, along with samples from the conditional posterior of these parameters. Our algorithm exploits the waveform's known analytical dependence on extrinsic parameters to efficiently marginalize over them using a single waveform evaluation. Our current implementation achieves a 10% precision on the marginalized likelihood within ≈50 ms on a single CPU core and is publicly available through the package cogwheel. We discuss applications of this tool for (i) gravitational wave searches involving higher modes or precession, (ii) efficient and robust parameter estimation, and (iii) generation of sky localization maps in low latency for electromagnetic followup of gravitational-wave alerts. The inclusion of higher modes can improve the distance measurement, providing an advantage over existing low-latency localization methods.
UR - http://www.scopus.com/inward/record.url?scp=85200497315&partnerID=8YFLogxK
U2 - 10.1103/PhysRevD.110.044010
DO - 10.1103/PhysRevD.110.044010
M3 - مقالة
SN - 2470-0010
VL - 110
JO - Physical review D
JF - Physical review D
IS - 4
M1 - 044010
ER -