Understanding the physical and evolutionary properties of Hot Stellar Systems (HSS) is a major challenge in astronomy. We studied the dataset on 13456 HSS of Misgeld and Hilker (2011) that includes 12763 candidate globular clusters using stellar mass ($M_s$), effective radius ($R_e$) and mass-to-luminosity ratio ($M_s/L_\nu$), and found multi-layered homogeneous grouping among these stellar systems. Our methods elicited eight homogeneous ellipsoidal groups at the finest sub-group level. Some of these groups have high overlap and were merged through a multi-phased syncytial algorithm motivated from Almod\'ovar-Rivera and Maitra (2020). Five groups were merged in the first phase, resulting in three complex-structured groups. Our algorithm determined further complex structure and permitted another merging phase, revealing two complex-structured groups at the highest level. A nonparametric bootstrap procedure was also used to estimate the confidence of each of our group assignments. These assignments generally had high confidence in classification, indicating great degree of certainty of the HSS assignments into our complex-structured groups. The physical and kinematic properties of the two groups were assessed in terms of $M_s$, $R_e$, surface density and $M_s/L_\nu$. The first group consisted of older, smaller and less bright HSS while the second group consisted of brighter and younger HSS. Our analysis provides novel insight into the physical and evolutionary properties of HSS and also helps understand physical and evolutionary properties of candidate globular clusters. Further, the candidate globular clusters (GCs) are seen to have very high chance of really being GCs rather than dwarfs or dwarf ellipticals that are also indicated to be quite distinct from each other.
翻译:我们研究了Misgeld 和 Hilker (2011年) 13456 HSS 的数据集,该数据集包括来自 Almod\'ovar-Rivera 和 Maitra (202020年) 的多阶段同步物理算法。在第一阶段,五组被合并,形成三个结构化组。我们的算法确定了更复杂的结构,允许在这些星系中再加一个结构化的多层组,揭示了两个在最高层次的复杂结构组。我们的方法还利用了一种不光学的靴带程序来估计我们集团每项任务的信任度。这些组中有一些高度重叠,并且通过由Almod\'ovar-Rivera 和 Maitra (202020年) 启动的多阶段同步算法来合并。五组在第一阶段被合并,导致三个结构化组。我们的算法又确定了更复杂的结构,揭示了两个结构化的复杂组。另一个结构化组中,一个是更不光学的靴带,用来估计我们集团每项任务的信任度。这些任务一般在分类中具有高度的信心,表明,在高层次的物理值的变变变变变的特性中具有很大的特性程度,HSS 和变变变的等级组中也显示HSS 。