Random Forests as a viable method to select and discover high redshift quasars
Lukas Wenzl, Jan-Torge Schindler, Xiaohui Fan, Irham Taufik Andika,, Eduardo Banados, Roberto Decarli, Knud Jahnke, Chiara Mazzucchelli, Masafusa, Onoue, Bram P. Venemans, Fabian Walter, Jinyi Yang

TL;DR
This paper demonstrates that random forests can effectively select high-redshift quasars up to z~6, achieving high completeness and efficiency, and discovers 20 new quasars through spectroscopic follow-up, showing the method's practical success.
Contribution
The study introduces a novel application of random forests for high-redshift quasar selection, achieving competitive results and discovering new quasars, surpassing traditional color cut methods.
Findings
Achieved 66-83% completeness in quasar selection.
Attained 78-94% selection efficiency.
Discovered 20 new high-redshift quasars.
Abstract
We present a method of selecting quasars up to redshift 6 with random forests, a supervised machine learning method, applied to Pan-STARRS1 and WISE data. We find that, thanks to the increasing set of known quasars we can assemble a training set that enables supervised machine learning algorithms to become a competitive alternative to other methods up to this redshift. We present a candidate set for the redshift range 4.8 to 6.3 which includes the region around z = 5.5 where quasars are difficult to select due to photometric similarity to red and brown dwarfs. We demonstrate that under our survey restrictions we can reach a high completeness ( below redshift 5.6 / above redshift 5.6) while maintaining a high selection efficiency ( / ). Our selection efficiency is estimated via a novel method based on the different…
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