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Quasi-Anomalous Gravitational-Wave Detection with Recurrent Autoencoders

ORAL

Abstract

Detection of gravitational wave (GW) signals in laser interferometers relies on having well modeled templates of the GW emission. We present a method of anomaly detection techniques based on deep recurrent autoencoders to the enhance the search region to potential, unmodelled transients. We use a semi-supervised strategy dubbed Quasi Anomalous Knowledge (QUAK) which provides a weak distinction between classes at training time. While the semi-supervised nature of the problem comes with a cost in terms of accuracy as compared to supervised techniques, there is a qualitative advantage in generalizing experimental sensitivity beyond pre-computed signal templates. We construct a low-dimensional embedded space using the QUAK method which captures the physical signatures of distinct signals on each axis of the space. By introducing alternative signal priors that capture some of the salient features of gravitational-wave signatures, we allow for the recovery of sensitivity even when an unmodelled anomaly is encountered. We show that regions of the QUAK space can identify binaries, detector glitches and also search a variety of hypothesized astrophysical sources that may emit GWs in the LIGO frequency band, including core-collapse supernovae and other stochastic sources.

Presenters

  • Ryan J Raikman

    Carnegie Mellon University

Authors

  • Ryan J Raikman

    Carnegie Mellon University

  • Eric Moreno

    Massachusetts Institute of Technology, MIT

  • Erik Katsavounidis

    Massachusetts Institute of Technology, MIT, LIGO Lab, MIT

  • Philip C Harris

    Massachusetts Institute of Technology, MIT

  • Ethan J Marx

    Massachusetts Institute of Technology

  • William Benoit

    University of Minnesota

  • Ekaterina Govorkova

    MIT

  • Deep Chatterjee

    Massachusetts Institute of Technology, MIT

  • Michael W Coughlin

    University of Minnesota

  • Muhammed S Cholayil

    LIGO, University of Minnesota

  • Dylan S Rankin

    Massachusetts Institute of Technology, University of Pennsylvania, MIT