CatNorth: An Improved Gaia DR3 Quasar Candidate Catalog with Pan-STARRS1 and CatWISE

A complete and pure sample of quasars with accurate redshifts is crucial for quasar studies and cosmology. In this paper, we present CatNorth, an improved Gaia DR3 quasar candidate catalog with more than 1.5 million sources in the 3\(\pi\) sky built with data from Gaia, Pan-STARRS1, and CatWISE2020....

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Hauptverfasser: Fu, Yuming, Xue-Bing, Wu, Li, Yifan, Pang, Yuxuan, Joshi, Ravi, Zhang, Shuo, Wang, Qiyue, Yang, Jing, Ng, FanLam, Liu, Xingjian, Qiu, Yu, Zhu, Rui, Wang, Huimei, Wolf, Christian, Zhang, Yanxia, Zhi-Ying Huo, Ai, Y L, Ma, Qinchun, Feng, Xiaotong, Bouwens, R J
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container_title arXiv.org
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creator Fu, Yuming
Xue-Bing, Wu
Li, Yifan
Pang, Yuxuan
Joshi, Ravi
Zhang, Shuo
Wang, Qiyue
Yang, Jing
Ng, FanLam
Liu, Xingjian
Qiu, Yu
Zhu, Rui
Wang, Huimei
Wolf, Christian
Zhang, Yanxia
Zhi-Ying Huo
Ai, Y L
Ma, Qinchun
Feng, Xiaotong
Bouwens, R J
description A complete and pure sample of quasars with accurate redshifts is crucial for quasar studies and cosmology. In this paper, we present CatNorth, an improved Gaia DR3 quasar candidate catalog with more than 1.5 million sources in the 3\(\pi\) sky built with data from Gaia, Pan-STARRS1, and CatWISE2020. The XGBoost algorithm is used to reclassify the original Gaia DR3 quasar candidates as stars, galaxies, and quasars. To construct training/validation datasets for the classification, we carefully built two different master stellar samples in addition to the spectroscopic galaxy and quasar samples. An ensemble classification model is obtained by averaging two XGBoost classifiers trained with different master stellar samples. Using a probability threshold of \(p_{\mathrm{QSO\_mean}}>0.95\) in our ensemble classification model and an additional cut on the logarithmic probability density of zero proper motion, we retrieved 1,545,514 reliable quasar candidates from the parent Gaia DR3 quasar candidate catalog. We provide photometric redshifts for all candidates with an ensemble regression model. For a subset of 89,100 candidates, accurate spectroscopic redshifts are estimated with the Convolutional Neural Network from the Gaia BP/RP spectra. The CatNorth catalog has a high purity of ~ 90% while maintaining high completeness, which is an ideal sample to understand the quasar population and its statistical properties. The CatNorth catalog is used as the main source of input catalog for the LAMOST phase III quasar survey, which is expected to build a highly complete sample of bright quasars with \(i < 19.5\).
doi_str_mv 10.48550/arxiv.2310.12704
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subjects Algorithms
Artificial neural networks
Candidates
Classification
Galaxies
Physics - Astrophysics of Galaxies
Physics - Cosmology and Nongalactic Astrophysics
Physics - Instrumentation and Methods for Astrophysics
Quasars
Regression models
Spectroscopy
Statistical analysis
title CatNorth: An Improved Gaia DR3 Quasar Candidate Catalog with Pan-STARRS1 and CatWISE
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