We investigated whether combining gas and stellar kinematic maps provides measurable advantages in recovering galaxy mass profiles compared to using single-component maps alone. We used deep learning models to leverage this joint information. We developed a probabilistic convolutional neural network (CNN) framework trained and tested on mock galaxy kinematic maps from multiple cosmological simulation suites. Our model was trained on gas-only, stars-only, and combined gas and stellar velocity maps, thus allowing the direct comparison of performance across tracers. To assess robustness, we included simulations with differing feedback models and galaxy properties. Combining gas and stellar maps reduces the dispersion in the inferred mass profiles by up to a factor of ∼1.5 compared to models using either tracer independently. The CNN architecture effectively captures complementary information from the two components. However, we find limitations in generalising between simulation suites, with reduced performance when applying models trained on one suite to galaxies from another.
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Expósito-Márquez et al. (Wed,) studied this question.
www.synapsesocial.com/papers/69df2b2ce4eeef8a2a6b014e — DOI: https://doi.org/10.1051/0004-6361/202557894/pdf
J. Expósito-Márquez
A. Di Cintio
C. Brook
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