Selection of Dwarf Galaxies Hosting AGNs: A Measure of Bias and Contamination using Unsupervised Machine Learning Techniques
Sogol Sanjaripour, Archana Aravindan, Gabriela Canalizo, Shoubaneh Hemmati, Bahram Mobasher, Alison L. Coil, Barry C. Barish

TL;DR
This study uses unsupervised machine learning, specifically Self-Organizing Maps, to analyze dwarf galaxy spectral energy distributions and evaluate biases in AGN selection methods, revealing distinct host properties and aiding in more accurate identification.
Contribution
The paper introduces the application of Self-Organizing Maps to explore AGN selection biases in dwarf galaxies, providing new insights into host properties and contaminant separation.
Findings
AGNs occupy distinct regions in the SOM, reflecting selection biases.
WISE-selected AGNs form two clusters associated with different host properties.
Traditional methods tend to avoid regions linked to star formation.
Abstract
Identifying AGNs in dwarf galaxies is critical for understanding black hole formation but remains challenging due to their low luminosities, low metallicities, and star formation-driven emission that can obscure AGN signatures. Machine learning (ML) techniques, particularly unsupervised methods, offer new ways to address these challenges by uncovering patterns in complex data. In this study, we apply Self-Organizing Maps (SOMs) to explore the SED manifold of dwarf galaxies and evaluate AGN selection biases across diagnostics. We train a 51 by 51 SOM on 30,344 dwarf galaxies (redshift less than 0.055 and stellar mass below 10 to the 9.5 solar masses) from the NSA catalog using nine-band photometry from near-UV to mid-infrared. A set of 438 previously identified dwarf AGNs, selected via various methods, was mapped onto the SOM. AGNs identified by different methods occupy distinct and…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Astronomy and Astrophysical Research · Astrophysical Phenomena and Observations
