Published January 27, 2023
| Version v1
Journal article
Open
First machine learning gravitational-wave search mock data challenge
Creators
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Schäfer, Marlin B.1
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Zelenka, Ondřej2
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Nitz, Alexander H.1
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Wang, He3
- Wu, Shichao1
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Guo, Zong-Kuan3
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Cao, Zhoujian4
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Ren, Zhixiang5
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Nousi, Paraskevi6
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Stergioulas, Nikolaos6
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Iosif, Panagiotis6
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Koloniari, Alexandra E.6
- Tefas, Anastasios6
- Passalis, Nikolaos6
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Salemi, Francesco7
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Vedovato, Gabriele8
- Klimenko, Sergey9
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Mishra, Tanmaya9
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Brügmann, Bernd2
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Cuoco, Elena10
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Huerta, E. A.11
- Messenger, Chris12
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Ohme, Frank1
- 1. Max-Planck-Institut für Gravitationsphysik
- 2. Friedrich-Schiller-Universität Jena
- 3. Chinese Academy of Sciences
- 4. Beijing Normal University
- 5. Peng Cheng Laboratory
- 6. Aristotle University of Thessaloniki
- 7. Università di Trento
- 8. INFN
- 9. University of Florida
- 10. European Gravitational Observatory
- 11. University of Chicago
- 12. University of Glasgow
Description
We present the results of the first Machine Learning Gravitational-Wave Search Mock Data Challenge. For this challenge, participating groups had to identify gravitational-wave signals from binary black hole mergers of increasing complexity and duration embedded in progressively more realistic noise. The final of the 4 provided datasets contained real noise from the O3a observing run and signals up to a duration of 20 s with the inclusion of precession effects and higher order modes. We present the average sensitivity distance and run-time for the 6 entered algorithms derived from 1 month of test data unknown to the participants prior to submission. Of these, 4 are machine learning algorithms. We find that the best machine learning based algorithms are able to achieve up to 95% of the sensitive distance of matched-filtering based production analyses for simulated Gaussian noise at a false-alarm rate (FAR) of one per month. In contrast, for real noise, the leading machine learning search achieved 70%. For higher FARs the differences in sensitive distance shrink to the point where select machine learning submissions outperform traditional search algorithms at FARs $≥200$ per month on some datasets. Our results show that current machine learning search algorithms may already be sensitive enough in limited parameter regions to be useful for some production settings. To improve the state-of-the-art, machine learning algorithms need to reduce the false-alarm rates at which they are capable of detecting signals and extend their validity to regions of parameter space where modeled searches are computationally expensive to run. Based on our findings we compile a list of research areas that we believe are the most important to elevate machine learning searches to an invaluable tool in gravitational-wave signal detection.
Files
PhysRevD.107.023021.pdf
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Additional details
Identifiers
- DOI
- 10.1103/PhysRevD.107.023021
- Other
- oai:uchicago.tind.io:13055
Funding
- Peng Cheng Laboratory
- Cloud Brain
- National Key Research and Development Program of China
- 2021YFC2203001
- NSFC
- 11920101003
- NSFC
- 12021003
- CAS Project for Young Scientists in Basic Research
- YSBR-006
- Aristotle University of Thessaloniki
- IT Center
- European Research Council
- European Union’s Horizon 2020 research and innovation programme
- National Science Foundation
- PHY 1806165
- National Science Foundation
- PHY 2110060
- National Science Foundation
- OAC-2209892
- National Science Foundation
- OAC-1931561
- Science and Technology Research Council
- ST/V005634/1
- European Cooperation in Science and Technology
- CA17137
- Max Planck Society
- Independent Research Group Programme
- European Gravitational Observatory
- French Centre National de Recherche Scientifique
- Italian Istituto Nazionale di Fisica Nucleare
- Dutch Nikhef
- Ministry of Education, Culture, Sports, Science and Technology
- Japan Society for the Promotion of Science
- National Research Foundation
- Ministry of Science and ICT
- Academia Sinica
- Ministry of Science and Technology