Machine learning for transient recognition in difference imaging with minimum sampling effort

Author:

Mong Y-L12,Ackley K12,Galloway D K12,Killestein T3,Lyman J3ORCID,Steeghs D3,Dhillon V4ORCID,O’Brien P T5,Ramsay G6,Poshyachinda S7,Kotak R8,Nuttall L9,Pallé E10,Pollacco D3,Thrane E1,Dyer M J4ORCID,Ulaczyk K3,Cutter R3ORCID,McCormac J3,Chote P3,Levan A J3,Marsh T3,Stanway E3ORCID,Gompertz B3ORCID,Wiersema K3,Chrimes A3ORCID,Obradovic A1,Mullaney J4,Daw E4,Littlefair S4,Maund J4ORCID,Makrygianni L4,Burhanudin U4,Starling R L C5ORCID,Eyles-Ferris R A J5,Tooke S5,Duffy C6,Aukkaravittayapun S7,Sawangwit U7,Awiphan S7,Mkrtichian D7,Irawati P7,Mattila S8,Heikkilä T8,Breton R11ORCID,Kennedy M11ORCID,Mata Sánchez D11,Rol E12

Affiliation:

1. School of Physics and Astronomy, Monash University, Clayton, VIC 3800, Australia

2. OzGrav: The ARC Centre of Excellence for Gravitational Wave Discovery, Clayton, VIC 3800, Australia

3. Department of Physics, University of Warwick, Coventry, West Midlands CV4 7AL, UK

4. Department of Physics and Astronomy, Hicks Building, The University of Sheffield, Sheffield S3 7RH, UK

5. School of Physics and Astronomy, University of Leicester, University Road, Leicester LE1 7RH, UK

6. Armagh Observatory and Planetarium, College Hill, Armagh BT61 9DB, UK

7. National Astronomical Research Institute of Thailand, 260 Moo 4, T. Donkaew, A. Maerim, Chiangmai 50180, Thailand

8. Department of Physics and Astronomy, University of Turku, FI-20014 Turku, Finland

9. Institute of Cosmology and Gravitation, University of Portsmouth, Dennis Sciama Building, Burnaby Road, Portsmouth PO1 3FX, UK

10. Instituto de Astrofisica de Canarias, La Laguna, E-38205 Tenerife, Spain

11. Department of Physics and Astronomy, The University of Manchester, Oxford Road, Manchester M13 9PL, UK

Abstract

ABSTRACT The amount of observational data produced by time-domain astronomy is exponentially increasing. Human inspection alone is not an effective way to identify genuine transients from the data. An automatic real-bogus classifier is needed and machine learning techniques are commonly used to achieve this goal. Building a training set with a sufficiently large number of verified transients is challenging, due to the requirement of human verification. We present an approach for creating a training set by using all detections in the science images to be the sample of real detections and all detections in the difference images, which are generated by the process of difference imaging to detect transients, to be the samples of bogus detections. This strategy effectively minimizes the labour involved in the data labelling for supervised machine learning methods. We demonstrate the utility of the training set by using it to train several classifiers utilizing as the feature representation the normalized pixel values in 21 × 21 pixel stamps centred at the detection position, observed with the Gravitational-wave Optical Transient Observer (GOTO) prototype. The real-bogus classifier trained with this strategy can provide up to $95{{\ \rm per\ cent}}$ prediction accuracy on the real detections at a false alarm rate of $1{{\ \rm per\ cent}}$.

Funder

Monash University

Horizon 2020 Framework Programme

Publisher

Oxford University Press (OUP)

Subject

Space and Planetary Science,Astronomy and Astrophysics

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