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Predicting the Neutral Hydrogen Content of Galaxies From Optical Data Using Machine Learning

Astrophysics of Galaxies 2018-07-18 v1

Abstract

We develop a machine learning-based framework to predict the HI content of galaxies using more straightforwardly observable quantities such as optical photometry and environmental parameters. We train the algorithm on z=0-2 outputs from the Mufasa cosmological hydrodynamic simulation, which includes star formation, feedback, and a heuristic model to quench massive galaxies that yields a reasonable match to a range of survey data including HI. We employ a variety of machine learning methods (regressors), and quantify their performance using the root mean square error ({\sc rmse}) and the Pearson correlation coefficient (r). Considering SDSS photometry, 3rd^{rd} nearest neighbor environment and line of sight peculiar velocities as features, we obtain r >0.8> 0.8 accuracy of the HI-richness prediction, corresponding to {\sc rmse}<0.3<0.3. Adding near-IR photometry to the features yields some improvement to the prediction. Compared to all the regressors, random forest shows the best performance, with r >0.9>0.9 at z=0z=0, followed by a Deep Neural Network with r >0.85>0.85. All regressors exhibit a declining performance with increasing redshift, which limits the utility of this approach to z\la1z\la 1, and they tend to somewhat over-predict the HI content of low-HI galaxies which might be due to Eddington bias in the training sample. We test our approach on the RESOLVE survey data. Training on a subset of RESOLVE data, we find that our machine learning method can reasonably well predict the HI-richness of the remaining RESOLVE data, with {\sc rmse}0.28\sim0.28. When we train on mock data from Mufasa and test on RESOLVE, this increases to {\sc rmse}0.45\sim0.45. Our method will be useful for making galaxy-by-galaxy survey predictions and incompleteness corrections for upcoming HI 21cm surveys such as the LADUMA and MIGHTEE surveys on MeerKAT, over regions where photometry is already available.

Keywords

Cite

@article{arxiv.1803.08334,
  title  = {Predicting the Neutral Hydrogen Content of Galaxies From Optical Data Using Machine Learning},
  author = {Mika Rafieferantsoa and Sambatra Andrianomena and Romeel Davé},
  journal= {arXiv preprint arXiv:1803.08334},
  year   = {2018}
}

Comments

16 pages, 11 figures, 1 table

R2 v1 2026-06-23T01:01:46.143Z