Machine Learning-Based Classification of Active Galaxies and Estimation of Supermassive Black Hole Masses
Farideh Mazoochi, Reihaneh Karimi, Mohammad Hossein Zhoolideh Haghighi, Fatemeh Tabatabaei

TL;DR
This study employs machine learning algorithms to classify active and star-forming galaxies efficiently, surpassing traditional diagnostic methods, and estimates supermassive black hole masses with high accuracy using galaxy properties.
Contribution
Introduces scalable machine learning classification and regression models for galaxy type identification and black hole mass estimation, improving speed and scalability over traditional methods.
Findings
SVC and Random Forest achieve ~93% accuracy in galaxy classification.
Models estimate black hole masses with R^2 between 0.75 and 0.77.
Machine learning offers a flexible alternative for large survey data analysis.
Abstract
Distinguishing active galaxies from star-forming galaxies is essential for understanding galaxy evolution. Diagnostic methods like the BPT (Baldwin, Phillips, and Terlevich) diagram use optical emission-line ratios to separate galaxies. However, with growing availability of large surveys and high-resolution instruments, manually identifying galaxy types has become increasingly challenging. In this study, we investigate machine learning to classify active and star-forming galaxies using properties like stellar mass, stellar velocity dispersion, colour, redshift, and [O III] luminosity. These new approaches enable faster AGN/star-forming galaxy classification than the BPT diagram and provide a flexible, scalable alternative that can complement traditional diagnostics, particularly for large surveys or low-quality data. We employ four classification algorithms -- Decision Tree, Random…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Gaussian Processes and Bayesian Inference · Astronomy and Astrophysical Research
