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Gaussian processes for the interpolation and marginalization of waveform error in extreme-mass-ratio-inspiral parameter estimation

MPG-Autoren
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Gair,  Jonathan
Astrophysical and Cosmological Relativity, AEI-Golm, MPI for Gravitational Physics, Max Planck Society;

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Zitation

Chua, A. J. K., Korsakova, N., Moore, C. J., Gair, J., & Babak, S. (2020). Gaussian processes for the interpolation and marginalization of waveform error in extreme-mass-ratio-inspiral parameter estimation. Physical Review D, 101(4): 044027. doi:10.1103/PhysRevD.101.044027.


Zitierlink: https://hdl.handle.net/21.11116/0000-0005-A57F-3
Zusammenfassung
A number of open problems hinder our present ability to extract scientific
information from data that will be gathered by the near-future
gravitational-wave mission LISA. Many of these relate to the modeling,
detection and characterization of signals from binary inspirals with an extreme
$(\lesssim10^{-4})$ component-mass ratio. In this paper, we draw attention to
the issue of systematic error in parameter estimation due to the use of fast
but approximate waveform models; this is found to be relevant for
extreme-mass-ratio inspirals even in the case of waveforms with $\gtrsim90\%$
overlap accuracy and moderate ($\gtrsim30$) signal-to-noise ratios. A scheme
that uses Gaussian processes to interpolate and marginalize over waveform error
is adapted and investigated as a possible precursor solution to this problem.
Several new methodological results are obtained, and the viability of the
technique is successfully demonstrated on a three-parameter example in the
setting of the LISA Data Challenge.