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Published March 10, 2020 | Accepted Version + Published
Journal Article Open

A Method to Distinguish Quiescent and Dusty Star-forming Galaxies with Machine Learning

Abstract

Large photometric surveys provide a rich source of observations of quiescent galaxies, including a surprisingly large population at z > 1. However, identifying large, but clean, samples of quiescent galaxies has proven difficult because of their near-degeneracy with interlopers such as dusty, star-forming galaxies. We describe a new technique for selecting quiescent galaxies based upon t-distributed stochastic neighbor embedding (t-SNE), an unsupervised machine-learning algorithm for dimensionality reduction. This t-SNE selection provides an improvement both over UVJ, removing interlopers that otherwise would pass color selection, and over photometric template fitting, more strongly toward high redshift. Due to the similarity between the colors of high- and low-redshift quiescent galaxies, under our assumptions, t-SNE outperforms template fitting in 63% of trials at redshifts where a large training sample already exists. It also may be able to select quiescent galaxies more efficiently at higher redshifts than the training sample.

Additional Information

© 2020. The American Astronomical Society. Received 2019 June 13; revised 2020 February 12; accepted 2020 February 13; published 2020 March 13. The authors wish to thank Johann Bock Severin, Gabe Brammer, Beryl Hovis-Afflerbach, Adam Jermyn, Christian Kragh Jespersen, Vasily Kokorev, Allison Man, Georgios Magdis, and Jonas Vinther for useful discussions. C.L.S. and S.T. are supported by ERC grant 648179 "ConTExt." The Cosmic Dawn Center (DAWN) is funded by the Danish National Research Foundation under grant No. 140. J.M. is supported by the Jonathan Baker Excellence in Physics Fund.

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Published - Steinhardt_2020_ApJ_891_136.pdf

Accepted Version - 2002.05729.pdf

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