TY - JOUR
T1 - An active galactic nucleus recognition model based on deep neural network
AU - Chen, Bo Han
AU - Goto, Tomotsugu
AU - Kim, Seong Jin
AU - Wang, Ting Wen
AU - Santos, Daryl Joe D.
AU - Ho, Simon C.C.
AU - Hashimoto, Tetsuya
AU - Poliszczuk, Artem
AU - Pollo, Agnieszka
AU - Trippe, Sascha
AU - Miyaji, Takamitsu
AU - Toba, Yoshiki
AU - Malkan, Matthew
AU - Serjeant, Stephen
AU - Pearson, Chris
AU - Seong Hwang, Ho
AU - Kim, Eunbin
AU - Shim, Hyunjin
AU - Lu, Ting Yi
AU - Hsiao, Yu Yang
AU - Huang, Ting Chi
AU - Herrera-Endoqui, Martin
AU - Bravo-Navarro, Blanca
AU - Matsuhara, Hideo
N1 - Publisher Copyright:
© 2021 Oxford University Press. All rights reserved.
PY - 2021/3/1
Y1 - 2021/3/1
N2 - To understand the cosmic accretion history of supermassive black holes, separating the radiation from active galactic nuclei (AGNs) and star-forming galaxies (SFGs) is critical. However, a reliable solution on photometrically recognizing AGNs still remains unsolved. In this work, we present a novel AGN recognition method based on Deep Neural Network (Neural Net; NN). The main goals of this work are (i) to test if the AGN recognition problem in the North Ecliptic Pole Wide (NEPW) field could be solved by NN; (ii) to show that NN exhibits an improvement in the performance compared with the traditional, standard spectral energy distribution (SED) fittingmethod in our testing samples; and (iii) to publicly release a reliable AGN/SFG catalogue to the astronomical community using the best available NEPW data, and propose a better method that helps future researchers plan an advanced NEPW data base. Finally, according to our experimental result, the NN recognition accuracy is around 80.29 per cent-85.15 per cent, with AGN completeness around 85.42 per cent-88.53 per cent and SFG completeness around 81.17 per cent-85.09 per cent.
AB - To understand the cosmic accretion history of supermassive black holes, separating the radiation from active galactic nuclei (AGNs) and star-forming galaxies (SFGs) is critical. However, a reliable solution on photometrically recognizing AGNs still remains unsolved. In this work, we present a novel AGN recognition method based on Deep Neural Network (Neural Net; NN). The main goals of this work are (i) to test if the AGN recognition problem in the North Ecliptic Pole Wide (NEPW) field could be solved by NN; (ii) to show that NN exhibits an improvement in the performance compared with the traditional, standard spectral energy distribution (SED) fittingmethod in our testing samples; and (iii) to publicly release a reliable AGN/SFG catalogue to the astronomical community using the best available NEPW data, and propose a better method that helps future researchers plan an advanced NEPW data base. Finally, according to our experimental result, the NN recognition accuracy is around 80.29 per cent-85.15 per cent, with AGN completeness around 85.42 per cent-88.53 per cent and SFG completeness around 81.17 per cent-85.09 per cent.
KW - infrared: Galaxies
KW - methods: Data analysis
KW - submillimetre: Galaxies
KW - ultraviolet: Galaxies
UR - http://www.scopus.com/inward/record.url?scp=85100343216&partnerID=8YFLogxK
U2 - 10.1093/mnras/staa3865
DO - 10.1093/mnras/staa3865
M3 - Article
AN - SCOPUS:85100343216
SN - 0035-8711
VL - 501
SP - 3951
EP - 3961
JO - Monthly Notices of the Royal Astronomical Society
JF - Monthly Notices of the Royal Astronomical Society
IS - 3
ER -