The Subaru/XMM-Newton Deep Survey (SXDS). IV. Evolution of Lya Emitters from z=3.1 to 5.7 in the 1 deg^2 Field: Luminosity Functions and AGN
Masami Ouchi, Kazuhiro Shimasaku, Masayuki Akiyama, Chris Simpson,, Tomoki Saito, Yoshihiro Ueda, Hisanori Furusawa, Kazuhiro Sekiguchi, Toru, Yamada, Tadayuki Kodama, Nobunari Kashikawa, Sadanori Okamura, Masanori Iye,, Tadafumi Takata, Michitoshi Yoshida, Makiko Yoshida

TL;DR
This study investigates the evolution of Lya emitters over redshifts 3.1 to 5.7, revealing stable Lya luminosity functions but increasing UV luminosity functions, and explores their properties and AGN activity in a large sky survey.
Contribution
It provides the first comprehensive analysis of Lya and UV luminosity functions of LAEs across multiple redshifts in a large survey area, including AGN identification and properties.
Findings
Lya luminosity functions show no significant evolution from z=3.1 to 5.7.
UV luminosity functions of LAEs increase with redshift.
Brightest LAEs tend to host AGNs.
Abstract
We present luminosity functions (LFs) and various properties of Lya emitters (LAEs) at z=3.1, 3.7, and 5.7, in a 1 deg^2 sky of the Subaru/XMM-Newton Deep Survey (SXDS) Field. We obtain a photometric sample of 858 LAE candidates based on deep Subaru/Suprime-Cam imaging data, and a spectroscopic sample of 84 confirmed LAEs from Subaru/FOCAS and VLT/VIMOS spectroscopy in a survey volume of ~10^6 Mpc^3 with a limiting Lya luminosity of ~3x10^42 erg/s. We derive the LFs of Lya and UV-continuum (~1500 \AA) for each redshift, taking into account the statistical error and the field-to-field variation. We find that the apparent Lya LF shows no significant evolution between z=3.1 and 5.7 within factors of 1.8 and 2.7 in L* and phi*, respectively. On the other hand, the UV LF of LAEs increases from z=3.1 to 5.7, indicating that galaxies with Lya emission are more common at earlier epochs. We…
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