44 research outputs found
MulGuisin, a Topological Network Finder and its Performance on Galaxy Clustering
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 find networks most
efficiently and it defines galaxy networks in a way that most closely resembles
human vision.Comment: 15 pages,12 figure
Graph Database Solution for Higher Order Spatial Statistics in the Era of Big Data
We present an algorithm for the fast computation of the general -point
spatial correlation functions of any discrete point set embedded within an
Euclidean space of . Utilizing the concepts of kd-trees and graph
databases, we describe how to count all possible -tuples in binned
configurations within a given length scale, e.g. all pairs of points or all
triplets of points with side lengths . Through bench-marking we show
the computational advantage of our new graph based algorithm over more
traditional methods. We show that all 3-point configurations up to and beyond
the Baryon Acoustic Oscillation scale (200 Mpc in physical units) can be
performed on current SDSS data in reasonable time. Finally we present the first
measurements of the 4-point correlation function of 0.5 million SDSS
galaxies over the redshift range .Comment: 9 pages, 8 figures, submitte
The Universe is worth pixels: Convolution Neural Network and Vision Transformers for Cosmology
We present a novel approach for estimating cosmological parameters,
, , , and one derived parameter, , from 3D
lightcone data of dark matter halos in redshift space covering a sky area of
and redshift range of , binned to
voxels. Using two deep learning algorithms, Convolutional Neural Network
(CNN) and Vision Transformer (ViT), we compare their performance with the
standard two-point correlation (2pcf) function. Our results indicate that CNN
yields the best performance, while ViT also demonstrates significant potential
in predicting cosmological parameters. By combining the outcomes of Vision
Transformer, Convolution Neural Network, and 2pcf, we achieved a substantial
reduction in error compared to the 2pcf alone. To better understand the inner
workings of the machine learning algorithms, we employed the Grad-CAM method to
investigate the sources of essential information in activation maps of the CNN
and ViT. Our findings suggest that the algorithms focus on different parts of
the density field and redshift depending on which parameter they are
predicting. This proof-of-concept work paves the way for incorporating deep
learning methods to estimate cosmological parameters from large-scale
structures, potentially leading to tighter constraints and improved
understanding of the Universe.Comment: 23 pages, 10 figure