The PAU Survey: Classifying low-z SEDs using Machine Learning clustering
A.L. Gonz\'alez-Mor\'an, P. Arrabal Haro, C. Mu\~n\'oz-Tu\~n\'on, J.M., Rodr\'iguez-Espinosa, J. S\'anchez-Almeida, J. Calhau, E. Gazta\~naga, F.J., Castander, P. Renard, L. Cabayol, E. Fernandez, C. Padilla, J., Garcia-Bellido, R. Miquel, J. De Vicente, E. Sanchez

TL;DR
This study applies unsupervised machine learning clustering to classify low-redshift galaxy SEDs from the PAU Survey, revealing distinct galaxy groups with different properties and demonstrating the effectiveness of low-resolution photometric spectra for galaxy classification.
Contribution
It introduces an unsupervised clustering method for galaxy SED classification using PAU Survey data, identifying meaningful galaxy groups and their properties.
Findings
12 distinct galaxy groups identified from 5234 targets
Groups show clear differences in emission lines, mass, age, and sSFR
Clustering with low-resolution spectra effectively classifies galaxy types
Abstract
We present an application of unsupervised Machine Learning Clustering to the PAU Survey of galaxy spectral energy distribution (SED) within the COSMOS field. The clustering algorithm is implemented and optimized to get the relevant groups in the data SEDs. We find 12 groups from a total number of 5,234 targets in the survey at z . Among the groups, 3,545 galaxies (68\%) show emission lines in the SEDs. These groups also include 1,689 old galaxies with no active star formation. We have fitted the SED to every single galaxy in each group with CIGALE. The mass, age and specific star formation rates (sSFR) of the galaxies range from age/Gyr ; log (M/M) , and log (sSFR/yr ) . The groups are well defined in their properties with galaxies having clear emission lines also having lower mass, are younger…
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