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Application of dimensionality reduction and clustering algorithms for the classification of kinematic morphologies of galaxies

Rosito, M. S. et al · EDP Sciences · 2023

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Context. The morphological classification of galaxies is considered a relevant issue and can be approached from different points of view. The increasing growth in the size and accuracy of astronomical data sets brings with it the need for the use of automatic methods to perform these classifications. Aims. The aim of this work is to propose and evaluate a method for the automatic unsupervised classification of kinematic morphologies of galaxies that yields a meaningful clustering and captures the variations of the fundamental properties of galaxies. Methods.We obtained kinematic maps for a sample of 2064 galaxies from the largest simulation of the EAGLE project that mimics integral field spectroscopy images. These maps are the input of a dimensionality reduction algorithm followed by a clustering algorithm. We analysed the variation of physical and observational parameters among the clusters obtained from the application of this procedure to different inputs. The inputs studied in this paper are (a) line-of-sight velocity maps for the whole sample of galaxies observed at fixed inclinations; (b) line-of-sight velocity, dispersion, and flux maps together for the whole sample of galaxies observed at fixed inclinations; (c) line-of-sight velocity, dispersion, and flux maps together for two separate subsamples of edge-on galaxies with similar amount of rotation; and (d) line-of-sight velocity, dispersion, and flux maps together for galaxies from different observation angles mixed. Results. The application of the method to solely line-of-sight velocity maps achieves a clear division between slow rotators (SRs) and fast rotators (FRs) and can differentiate rotation orientation. By adding the dispersion and flux information at the input, low-rotation edge-on galaxies are separated according to their shapes and, at lower inclinations, the clustering using the three types of maps maintains the overall information obtained using only the line-of-sight velocity maps. This method still produces meaningful groups when applied to SRs and FRs separately, but in the first case the division into clusters is less clear than when the input includes a variety of morphologies. When applying the method to a mixture of galaxies observed from different inclinations, we obtain results that are similar to those in our previous experiments with the advantage that in this case the input is more realistic. In addition, our method has proven to be robust: it consistently classifies the same galaxies viewed from different inclinations.
Fil: Rosito, M. S.. Consejo Nacional de Investigaciones Científicas y Técnicas. Oficina de Coordinación Administrativa Ciudad Universitaria. Instituto de Astronomía y Física del Espacio. - Universidad de Buenos Aires. Facultad de Ciencias Exactas y Naturales. Instituto de Astronomía y Física del Espacio; Argentina
Fil: Bignone, Lucas Axel. Consejo Nacional de Investigaciones Científicas y Técnicas. Oficina de Coordinación Administrativa Ciudad Universitaria. Instituto de Astronomía y Física del Espacio. - Universidad de Buenos Aires. Facultad de Ciencias Exactas y Naturales. Instituto de Astronomía y Física del Espacio; Argentina

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APA 7

Rosito, M. S. E. A. (2023). Application of dimensionality reduction and clustering algorithms for the classification of kinematic morphologies of galaxies. http://hdl.handle.net/11336/224575

MLA

Rosito, M. S. et al. "Application of dimensionality reduction and clustering algorithms for the classification of kinematic morphologies of galaxies." 2023. http://hdl.handle.net/11336/224575.

Chicago

Rosito, M. S. et al. 2023. "Application of dimensionality reduction and clustering algorithms for the classification of kinematic morphologies of galaxies.". http://hdl.handle.net/11336/224575.

Harvard

Rosito, M. S. E. A. 2023, Application of dimensionality reduction and clustering algorithms for the classification of kinematic morphologies of galaxies, EDP Sciences, available at: http://hdl.handle.net/11336/224575 [Accessed 28 Jun. 2026].

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Título
Application of dimensionality reduction and clustering algorithms for the classification of kinematic morphologies of galaxies
Autor / colaboradores
Rosito, M. S. et al
Editorial
EDP Sciences
Año de publicación
2023
ISSN
0004-6361
ISSN
0004-6361
Idioma
eng

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