Anomaly detection for machine learning redshifts applied to SDSS galaxies

Mar 27, 2015
12 pages
Published in:
  • Mon.Not.Roy.Astron.Soc. 452 (2015) 4, 4183-4194
  • Published: Oct 1, 2015
e-Print:

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Abstract: (Oxford University Press)
We present an analysis of anomaly detection for machine learning redshift estimation. Anomaly detection allows the removal of poor training examples, which can adversely influence redshift estimates. Anomalous training examples may be photometric galaxies with incorrect spectroscopic redshifts, or galaxies with one or more poorly measured photometric quantity. We select 2.5 million ‘clean’ SDSS DR12 galaxies with reliable spectroscopic redshifts, and 6730 ‘anomalous’ galaxies with spectroscopic redshift measurements which are flagged as unreliable. We contaminate the clean base galaxy sample with galaxies with unreliable redshifts and attempt to recover the contaminating galaxies using the Elliptical Envelope technique. We then train four machine learning architectures for redshift analysis on both the contaminated sample and on the preprocessed ‘anomaly-removed’ sample and measure redshift statistics on a clean validation sample generated without any preprocessing. We find an improvement on all measured statistics of up to 80 per cent when training on the anomaly removed sample as compared with training on the contaminated sample for each of the machine learning routines explored. We further describe a method to estimate the contamination fraction of a base data sample.
Note:
  • 13 pages, 8 figures, 1 table, minor text updates to macth MNRAS accepted version
  • catalogues
  • surveys
  • galaxies: distances and redshifts