English

A Local Dwarf Galaxy Search Using Machine Learning

Astrophysics of Galaxies 2025-03-19 v2

Abstract

We present a machine learning search for local, low-mass galaxies (z<0.02z < 0.02 and 106M<M<109M10^6 M_\odot < M_* < 10^9 M_\odot) using the combined photometric data from the DESI Imaging Legacy Surveys and the WISE survey. We introduce the spectrally confirmed training sample, discuss evaluation metrics, investigate the features, compare different machine learning algorithms, and find that a 7-class neural network classification model is highly effective in separating the signal (local, low-mass galaxies) from various contaminants, reaching a precision of 95%95\% and a recall of 76%76\%. The principal contaminants are nearby sub-LL^* galaxies at 0.02<z<0.050.02 < z < 0.05 and nearby massive galaxies at 0.05<z<0.20.05 < z < 0.2. We find that the features encoding surface brightness information are essential to achieving a correct classification. Our final catalog, which we make available, consists of 112,859 local, low-mass galaxy candidates, where 36,408 have high probability (psignal>0.95p_{\rm signal} > 0.95), covering the entire Legacy Surveys DR9 footprint. Using DESI-EDR public spectra and data from the SAGA and ELVES surveys, we find that our model has a precision of 100%\sim 100\%, 96%96\%, and 97%97\%, respectively, and a recall of 51%\sim 51\%, 68%68\% and 53%53\%, respectively. The results of those independent spectral verification demonstrate the effectiveness and efficiency of our machine learning classification model.

Keywords

Cite

@article{arxiv.2503.00109,
  title  = {A Local Dwarf Galaxy Search Using Machine Learning},
  author = {Huanian Zhang and Guangping Ye and Rongyu Wu and Dennis Zaritsky},
  journal= {arXiv preprint arXiv:2503.00109},
  year   = {2025}
}

Comments

22 pages, accepted for publication in the ApJ Supplement Series (revised to correct a few minor issues)

R2 v1 2026-06-28T22:02:28.698Z