Blooming Trees: Substructures and Surrounding Groups of Galaxy Clusters
Heng Yu, Antonaldo Diaferio, Ana Laura Serra, Marco Baldi

TL;DR
The paper introduces the Blooming Tree Algorithm, a novel spectroscopic redshift-based method for identifying galaxy cluster substructures and surrounding groups, demonstrating improved accuracy over existing algorithms through tests on simulated data.
Contribution
It presents a new hierarchical clustering algorithm that effectively detects galaxy substructures and groups using only redshift data, outperforming previous methods.
Findings
Recovers 80% of real substructures in simulations
Identifies 60% of surrounding groups accurately
Improves detection performance by a factor of two
Abstract
We develop the Blooming Tree Algorithm, a new technique that uses spectroscopic redshift data alone to identify the substructures and the surrounding groups of galaxy clusters, along with their member galaxies. Based on the estimated binding energy of galaxy pairs, the algorithm builds a binary tree that hierarchically arranges all the galaxies in the field of view. The algorithm searches for buds, corresponding to gravitational potential minima on the binary tree branches; for each bud, the algorithm combines the number of galaxies, their velocity dispersion and their average pairwise distance into a parameter that discriminates between the buds that do not correspond to any substructure or group, and thus eventually die, and the buds that correspond to substructures and groups, and thus bloom into the identified structures. We test our new algorithm with a sample of 300 mock redshift…
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