Application of Manifold Learning to Selection of Different Galaxy Populations and Scaling Relation Analysis
The growing volume of data produced by large astronomical surveys necessitates the development of efficient analysis techniques capable of effectively managing high-dimensional datasets. This study addresses this need by demonstrating some applications of manifold learning and dimensionality reducti...
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Zusammenfassung: | The growing volume of data produced by large astronomical surveys
necessitates the development of efficient analysis techniques capable of
effectively managing high-dimensional datasets. This study addresses this need
by demonstrating some applications of manifold learning and dimensionality
reduction techniques, specifically the Self-Organizing Map (SOM), on the
optical+NIR SED space of galaxies, with a focus on sample comparison, selection
biases, and predictive power using a small subset. To this end, we utilize a
large photometric sample from the five CANDELS fields and a subset with
spectroscopic measurements from the KECK MOSDEF survey in two redshift bins at
$z\sim1.5$ and $z\sim2.2$. We trained SOM with the photometric data and mapped
the spectroscopic data onto it as our study case. We found that MOSDEF targets
do not cover all SED shapes existing in the SOM. Our findings reveal that
Active Galactic Nuclei (AGN) within the MOSDEF sample are mapped onto the more
massive regions of the SOM, confirming previous studies and known selection
biases towards higher-mass, less dusty galaxies. Furthermore, SOM were utilized
to map measured spectroscopic features, examining the relationship between
metallicity variations and galaxy mass. Our analysis confirmed that more
massive galaxies exhibit lower [OIII]/H$\beta$ and [OIII]/[OII] ratios and
higher H$\alpha$/H$\beta$ ratios, consistent with the known mass-metallicity
relation. These findings highlight the effectiveness of SOM in analyzing and
visualizing complex, multi-dimensional datasets, emphasizing their potential in
data-driven astronomical studies. |
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DOI: | 10.48550/arxiv.2410.07354 |