Mapping the Diversity of Galaxy Spectra with Deep Unsupervised Machine Learning
Authors
Teimoorinia, Hossen
Archinuk, Finn
Woo, Joanna
Shishehchi, Sara
Bluck, Asa FL
Publication Date
2021-12-06Journal Title
The Astronomical Journal
ISSN
0004-6256
Publisher
American Astronomical Society
Volume
163
Issue
2
Language
en
Type
Article
This Version
VoR
Metadata
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Teimoorinia, H., Archinuk, F., Woo, J., Shishehchi, S., & Bluck, A. F. (2021). Mapping the Diversity of Galaxy Spectra with Deep Unsupervised Machine
Learning. The Astronomical Journal, 163 (2) https://doi.org/10.3847/1538-3881/ac4039
Abstract
Modern spectroscopic surveys of galaxies such as MaNGA consist of millions of
diverse spectra covering different regions of thousands of galaxies. We propose
and implement a deep unsupervised machine learning method to summarize the
entire diversity of MaNGA spectra onto a 15x15 map (DESOM-1), where
neighbouring points on the map represent similar spectra. We demonstrate our
method as an alternative to conventional full spectral fitting for deriving
physical quantities, as well as their full probability distributions, much more
efficiently than traditional resource-intensive Bayesian methods. Since spectra
are grouped by similarity, the distribution of spectra onto the map for a
single galaxy, i.e., its "fingerprint", reveals the presence of distinct
stellar populations within the galaxy indicating smoother or episodic
star-formation histories. We further map the diversity of galaxy fingerprints
onto a second map (DESOM-2). Using galaxy images and independent measures of
galaxy morphology, we confirm that galaxies with similar fingerprints have
similar morphologies and inclination angles. Since morphological information
was not used in the mapping algorithm, relating galaxy morphology to the
star-formation histories encoded in the fingerprints is one example of how the
DESOM maps can be used to make scientific inferences.
Keywords
310, Galaxies and Cosmology
Identifiers
ajac4039, ac4039, aas34843
External DOI: https://doi.org/10.3847/1538-3881/ac4039
This record's URL: https://www.repository.cam.ac.uk/handle/1810/333146
Rights
Licence:
http://creativecommons.org/licenses/by/4.0/
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