TY - JOUR
T1 - MulGuisin, a Topological Network Finder and Its Performance on Galaxy Clustering
AU - Ju, Young
AU - Park, Inkyu
AU - Sabiu, Cristiano G.
AU - Hong, Sungwook E.
N1 - Publisher Copyright:
© Published under Creative Commons license CC BY-SA 4.0.
PY - 2025/1
Y1 - 2025/1
N2 - We introduce a new clustering algorithm, MulGuisin (MGS), that can identify distinct galaxy over-densities using topological information from the galaxy distribution. This algorithm was first introduced in an LHC experiment as a Jet Finder software, which looks for particles that clump together in close proximity. The algorithm preferentially considers particles with high energies and merges them only when they are closer than a certain distance to create a jet. MGS shares some similarities with the minimum spanning tree (MST) since it provides both clustering and network-based topology information. Also, similar to the density-based spatial clustering of applications with noise (DBSCAN), MGS uses the ranking or the local density of each particle to construct clustering. In this paper, we compare the performances of clustering algorithms using controlled data and some realistic simulation data as well as the SDSS observation data, and we demonstrate that our new algorithm finds networks most correctly and defines galaxy networks in a way that most closely resembles human vision.
AB - We introduce a new clustering algorithm, MulGuisin (MGS), that can identify distinct galaxy over-densities using topological information from the galaxy distribution. This algorithm was first introduced in an LHC experiment as a Jet Finder software, which looks for particles that clump together in close proximity. The algorithm preferentially considers particles with high energies and merges them only when they are closer than a certain distance to create a jet. MGS shares some similarities with the minimum spanning tree (MST) since it provides both clustering and network-based topology information. Also, similar to the density-based spatial clustering of applications with noise (DBSCAN), MGS uses the ranking or the local density of each particle to construct clustering. In this paper, we compare the performances of clustering algorithms using controlled data and some realistic simulation data as well as the SDSS observation data, and we demonstrate that our new algorithm finds networks most correctly and defines galaxy networks in a way that most closely resembles human vision.
KW - large-scale structure of the Universe
KW - methods: statistical
UR - https://www.scopus.com/pages/publications/85215707149
U2 - 10.5303/JKAS.2025.58.1.1
DO - 10.5303/JKAS.2025.58.1.1
M3 - Article
AN - SCOPUS:85215707149
SN - 1225-4614
VL - 58
SP - 1
EP - 15
JO - Journal of the Korean Astronomical Society
JF - Journal of the Korean Astronomical Society
IS - 1
ER -