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Interpretable Faraday Complexity Classification

Authors :
Alger, M. J.
Livingston, J. D.
McClure-Griffiths, N. M.
Nabaglo, J. L.
Wong, O. I.
Ong, C. S.
Source :
Publ. Astron. Soc. Aust. 38 (2021) e022
Publication Year :
2021

Abstract

Faraday complexity describes whether a spectropolarimetric observation has simple or complex magnetic structure. Quickly determining the Faraday complexity of a spectropolarimetric observation is important for processing large, polarised radio surveys. Finding simple sources lets us build rotation measure grids, and finding complex sources lets us follow these sources up with slower analysis techniques or further observations. We introduce five features that can be used to train simple, interpretable machine learning classifiers for estimating Faraday complexity. We train logistic regression and extreme gradient boosted tree classifiers on simulated polarised spectra using our features, analyse their behaviour, and demonstrate our features are effective for both simulated and real data. This is the first application of machine learning methods to real spectropolarimetry data. With 95 per cent accuracy on simulated ASKAP data and 90 per cent accuracy on simulated ATCA data, our method performs comparably to state-of-the-art convolutional neural networks while being simpler and easier to interpret. Logistic regression trained with our features behaves sensibly on real data and its outputs are useful for sorting polarised sources by apparent Faraday complexity.<br />Comment: Accepted for publication in PASA

Details

Database :
arXiv
Journal :
Publ. Astron. Soc. Aust. 38 (2021) e022
Publication Type :
Report
Accession number :
edsarx.2102.10903
Document Type :
Working Paper
Full Text :
https://doi.org/10.1017/pasa.2021.10