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Published March 15, 2015 | Published
Journal Article Open

Multivariate classification with random forests for gravitational wave searches of black hole binary coalescence

Abstract

Searches for gravitational waves produced by coalescing black hole binaries with total masses ≳25  M_⊙ use matched filtering with templates of short duration. Non-Gaussian noise bursts in gravitational wave detector data can mimic short signals and limit the sensitivity of these searches. Previous searches have relied on empirically designed statistics incorporating signal-to-noise ratio and signal-based vetoes to separate gravitational wave candidates from noise candidates. We report on sensitivity improvements achieved using a multivariate candidate ranking statistic derived from a supervised machine learning algorithm. We apply the random forest of bagged decision trees technique to two separate searches in the high mass (≳25  M_⊙) parameter space. For a search which is sensitive to gravitational waves from the inspiral, merger, and ringdown of binary black holes with total mass between 25  M_⊙ and 100  M_⊙, we find sensitive volume improvements as high as 70_(±13)%–109_(±11)% when compared to the previously used ranking statistic. For a ringdown-only search which is sensitive to gravitational waves from the resultant perturbed intermediate mass black hole with mass roughly between 10  M_⊙ and 600  M_⊙, we find sensitive volume improvements as high as 61_(±4)%–241_(±12)% when compared to the previously used ranking statistic. We also report how sensitivity improvements can differ depending on mass regime, mass ratio, and available data quality information. Finally, we describe the techniques used to tune and train the random forest classifier that can be generalized to its use in other searches for gravitational waves.

Additional Information

© 2015 American Physical Society. Received 19 December 2014; published 13 March 2015. We gratefully acknowledge the National Science Foundation for funding LIGO, and LIGO Scientific Collaboration and Virgo Collaboration for access to these data. P. T. B. and N. J. C. were supported by NSF Grant No. PHY-1306702. S. C. was supported by NSF Grants No. PHY-0970074 and No. PHY-1307429. D. T. was supported by NSF Grants No. PHY-1205952 and No. PHY-1307401. C. C. was partially supported by NSF Grants No. PHY-0903631 and No. PHY-1208881. This document has been assigned LIGO laboratory document number P1400231. The authors would like to acknowledge Thomas Dent, Chad Hanna, and Kipp Cannon for work during the initial phase of this analysis. The authors would also like to thank Alan Weinstein, Gregory Mendell, and Marco Drago for useful discussion and guidance.

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August 20, 2023
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October 23, 2023