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Published January 1, 2014 | Published + Submitted
Journal Article Open

Photometric classification of emission line galaxies with machine-learning methods

Abstract

In this paper, we discuss an application of machine-learning-based methods to the identification of candidate active galactic nucleus (AGN) from optical survey data and to the automatic classification of AGNs in broad classes. We applied four different machine-learning algorithms, namely the Multi Layer Perceptron, trained, respectively, with the Conjugate Gradient, the Scaled Conjugate Gradient, the Quasi Newton learning rules and the Support Vector Machines, to tackle the problem of the classification of emission line galaxies in different classes, mainly AGNs versus non-AGNs, obtained using optical photometry in place of the diagnostics based on line intensity ratios which are classically used in the literature. Using the same photometric features, we discuss also the behaviour of the classifiers on finer AGN classification tasks, namely Seyfert I versus Seyfert II, and Seyfert versus LINER. Furthermore, we describe the algorithms employed, the samples of spectroscopically classified galaxies used to train the algorithms, the procedure followed to select the photometric parameters and the performances of our methods in terms of multiple statistical indicators. The results of the experiments show that the application of self-adaptive data mining algorithms trained on spectroscopic data sets and applied to carefully chosen photometric parameters represents a viable alternative to the classical methods that employ time-consuming spectroscopic observations.

Additional Information

© 2013 The Authors. Published by Oxford University Press on behalf of the Royal Astronomical Society. Accepted 2013 October 10. Received 2013 September 24; in original form 2013 August 1. First published online: November 11, 2013. The authors would like to thank the anonymous referee for the comments and suggestions which helped us to improve the paper. The authors wish to thank the whole DAMEWARE working group, whose huge efforts made the DM facility available to the scientific community. MB wishes to thank the financial support of PRIN-INAF 2010, Architecture and Tomography of Galaxy Clusters. The authors also wish to thank the financial support of Project F.A.R.O. III Tornata (P.I.: Dr. M. Paolillo, University Federico II of Naples). GL acknowledges financial contribution through the PRIN-MIUR 2012 Euclid.

Attached Files

Published - MNRAS-2014-Cavuoti-968-75.pdf

Submitted - 1310.2840v1.pdf

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