Rapid determination of LISA sensitivity to extreme mass ratio inspirals with machine learning
Christian E. A. Chapman-Bird, Christopher P. L. Berry, Graham Woan

TL;DR
This paper introduces a machine learning framework that rapidly predicts EMRI detectability for LISA, enabling accurate population studies and bias correction in gravitational wave data analysis.
Contribution
The authors develop neural network models to efficiently estimate EMRI signal detectability and selection functions, significantly reducing computational costs in population inference.
Findings
Neural networks accurately predict EMRI signal-to-noise ratios.
The framework enables correction of selection biases in population analyses.
Predicted measurement precisions for MBH and CO mass functions and event rates.
Abstract
Gravitational wave observations of the inspiral of stellar-mass compact objects into massive black holes (MBHs), extreme mass ratio inspirals (EMRIs), enable precision measurements of parameters such as the MBH mass and spin. The Laser Interferometer Space Antenna is expected to detect sufficient EMRIs to probe the underlying source population, testing theories of the formation and evolution of MBHs and their environments. Population studies are subject to selection effects that vary across the EMRI parameter space, which bias inference results if unaccounted for. This bias can be corrected, but evaluating the detectability of many EMRI signals is computationally expensive. We mitigate this cost by (i) constructing a rapid and accurate neural network interpolator capable of predicting the signal-to-noise ratio of an EMRI from its parameters, and (ii) further accelerating detectability…
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Taxonomy
TopicsPulsars and Gravitational Waves Research · Radio Astronomy Observations and Technology · Gamma-ray bursts and supernovae
