Probabilistic Classification of Infrared-selected targets for SPHEREx mission: In search of YSOs
K. Lakshmipathaiah, S. Vig, Matthew L. N. Ashby, Joseph L. Hora, Miju, Kang, Rama Krishna Sai S. Gorthi

TL;DR
This paper develops a machine learning-based probabilistic classification method for infrared sources, specifically identifying young stellar objects and other classes, to improve the accuracy and confidence of classifications for the upcoming SPHEREx mission.
Contribution
It introduces a novel machine learning approach that classifies IR-selected targets into multiple astrophysical categories with associated confidence levels, surpassing traditional color-based methods.
Findings
Identified nearly 2 million sources with >90% classification confidence.
Yields detailed subclassification of YSOs and AGB stars.
Validated classifications with spatial distribution analysis.
Abstract
We apply machine learning algorithms to classify Infrared (IR)-selected targets for NASA's upcoming SPHEREx mission. In particular, we are interested in classifying Young Stellar Objects (YSOs), which are essential for understanding the star formation process. Our approach differs from previous work, which has relied heavily on broadband color criteria to classify IR-bright objects, and are typically implemented in color-color and color-magnitude diagrams. However, these methods do not state the confidence associated with the classification and the results from these methods are quite ambiguous due to the overlap of different source types in these diagrams. Here, we utilize photometric colors and magnitudes from seven near and mid-infrared bands simultaneously and employ machine and deep learning algorithms to carry out probabilistic classification of YSOs, Asymptotic Giant Branch (AGB)…
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