AGNBoost: A Machine Learning Approach to AGN Identification with JWST/NIRCam+MIRI Colors and Photometry
Kurt Hamblin, Allison Kirkpatrick, Bren E. Backhaus, Gregory Troiani, Jeyhan S. Kartaltepe, Dale D. Kocevski, Anton M. Koekemoer, Erini Lambrides, Casey Papovich, Kaila Ronayne, Guang Yang, Micaela B. Bagley, Mark Dickinson, Steven L. Finkelstein, Pablo Arrabal Haro

TL;DR
AGNBoost is a machine learning framework that accurately identifies active galactic nuclei and estimates their redshifts from JWST photometry, demonstrating robustness and generalization across simulated and real datasets.
Contribution
This work introduces AGNBoost, a novel machine learning approach using XGBoostLSS for AGN identification and redshift estimation from JWST data, with high accuracy and efficiency.
Findings
Achieves 15% outlier fraction on mock data for AGN fraction and redshift
Identifies 92.6% of AGN candidates with high confidence on independent templates
Maintains robust performance with realistic photometric uncertainties
Abstract
We present AGNBoost, a machine learning framework utilizing XGBoostLSS to identify AGN and estimate redshifts from JWST NIRCam and MIRI photometry. AGNBoost constructs 66 input features from 7 NIRCam and 4 MIRI bands to predict the fraction of mid-IR --m emission attributable to an AGN power law () and photometric redshift. Each model is trained on simulated galaxies from CIGALE. Models are tested on mock CIGALE galaxies, an independent set of empirically-derived templates, and 748 observations from the JWST MIRI EGS Galaxy and AGN (MEGA) survey. On idealized noise-free mock CIGALE galaxies, AGNBoost achieves outlier fractions of () and (redshift), with for and for redshift. When realistic photometric…
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Taxonomy
TopicsInfrared Target Detection Methodologies
