选择拥有活动星系核的矮星系:使用无监督机器学习技术测量偏差和污染

Sogol Sanjaripour, Archana Aravindan, Gabriela Canalizo, Shoubaneh Hemmati, Bahram Mobasher, Alison L. Coil and Barry C. Barish
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引用次数: 0

摘要

在矮星系中识别活动星系核(AGN)对于理解黑洞的形成至关重要,但由于它们的低光度、金属丰度和恒星形成驱动的发射可能会模糊AGN的特征,因此在观测上仍然具有挑战性。机器学习技术,特别是无监督方法,通过揭示复杂的多波长数据中的模式,为解决这些挑战提供了新的方法。在这项研究中,我们应用自组织映射(SOMs)来探索矮星系的光谱能量分布(SED)流形,并评估各种诊断中的AGN选择偏差。我们使用近紫外到中红外的九波段测光技术,对来自NSA目录的30,344个矮星系(z < 0.055, M* < 109.5M⊙)进行了51 × 51 SOM的训练。通过中红外颜色,光学发射线,x射线,光学变异性和宽线特征选择的438个先前确定的矮agn被映射到SOM上。不同方法识别的agn在SED空间中占据不同的部分重叠区域,反映了与宿主星系特性相关的偏差。广域红外巡天探测器(WISE)选择的agn强烈集中在低质量区域,形成两个不同的团块:一个与更蓝的星爆系统有关,另一个与更红的星系有关,显示出更典型的agn的光谱特征。这种分离可能有助于将真正的AGN宿主从wise选择的样品中的星爆污染物中分离出来。此外,通过各种诊断选择的AGN倾向于避开强恒星形成的区域,而一小部分低质量AGN占据了SOM区域,这表明相对于它们的恒星含量,AGN的亮度很高。我们的结果证明了流形学习在改进低质量状态下AGN选择方面的效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Selection of Dwarf Galaxies Hosting Active Galactic Nuclei: A Measure of Bias and Contamination Using Unsupervised Machine Learning Techniques
Identifying active galactic nuclei (AGNs) in dwarf galaxies is critical for understanding black hole formation but remains observationally challenging due to their low luminosities, metallicities, and star formation–driven emission that can obscure AGN signatures. Machine learning techniques, particularly unsupervised methods, offer new ways to address these challenges by uncovering patterns in complex, multiwavelength data. In this study, we apply Self-Organizing Maps (SOMs) to explore the spectral energy distribution (SED) manifold of dwarf galaxies and evaluate AGN selection biases across various diagnostics. We train a 51 × 51 SOM on 30,344 dwarf galaxies (z < 0.055, M* < 109.5M⊙) from the NSA catalog using nine-band photometry spanning near-UV to mid-infrared. A set of 438 previously identified dwarf AGNs, selected via mid-infrared color, optical emission lines, X-ray, optical variability, and broad-line features, was mapped onto the SOM. AGNs identified by different methods occupy distinct and partially overlapping regions in SED space, reflecting biases related to host galaxy properties. Wide-field Infrared Survey Explorer (WISE)-selected AGNs are strongly concentrated in lower-mass regions and form two distinct clumps: one associated with bluer, starburst-like systems and the other with redder galaxies showing spectral features more typical of AGNs. This separation may help disentangle true AGN hosts from starburst contaminants in WISE-selected samples. Additionally, AGNs selected via various diagnostics tend to avoid regions of strong star formation, while a subset of lower-mass AGNs occupy SOM regions indicative of high AGN luminosity relative to their stellar content. Our results demonstrate the utility of manifold learning in refining AGN selection in the low-mass regime.
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