English

Clustering clusters: unsupervised machine learning on globular cluster structural parameters

Astrophysics of Galaxies 2020-01-08 v1

Abstract

Globular Clusters (GCs) have historically been subdivided in either two (disk/halo) or three (disk/inner-halo/outer-halo) groups based on their orbital, chemical and internal physical properties. The qualitative nature of this subdivision makes it impossible to determine whether the natural number of groups is actually two, three, or more. In this paper we use cluster analysis on the (logM,logσ0,logRe,[Fe/H],logZ)(\log M, \log \sigma_0, \log R_e, [Fe/H], \log | Z |) space to show that the intrinsic number of GC groups is actually either k=2k=2 or k=3k=3, with the latter being favored albeit non-significantly. In the k=2k=2 case, the Partitioning Around Medoids (PAM) clustering algorithm recovers a metal-poor halo GC group and a metal-rich disk GC group. With k=3k=3 the three groups can be interpreted as disk/inner-halo/outer-halo families. For each group we obtain a medoid, i.e. a representative element (NGC 63526352, NGC 59865986, and NGC 54665466 for the disk, inner halo, and outer halo respectively), and a measure of how strongly each GC is associated to its group, the so-called silhouette width. Using the latter, we find a correlation with age for both disk and outer halo GCs where the stronger the association of a GC with the disk (outer halo) group, the younger (older) it is.

Keywords

Cite

@article{arxiv.1901.05354,
  title  = {Clustering clusters: unsupervised machine learning on globular cluster structural parameters},
  author = {Mario Pasquato and Chul Chung},
  journal= {arXiv preprint arXiv:1901.05354},
  year   = {2020}
}

Comments

17 figures, MNRAS submitted

R2 v1 2026-06-23T07:13:31.706Z