Galaxy morphological classification in deep-wide surveys via unsupervised machine learning
Garreth Martin, Sugata Kaviraj, Alex Hocking, Shaun C. Read, James E., Geach

TL;DR
This paper presents an unsupervised machine learning approach to classify galaxy morphologies in large, deep-wide surveys, effectively handling data volume and cadence challenges, and producing reliable, publicly available classifications.
Contribution
It introduces a clustering algorithm applied to galaxy images that autonomously groups similar morphologies without training sets, suitable for upcoming large surveys.
Findings
High purity of morphological clusters
Reproduces known galaxy property trends
Demonstrates effectiveness of unsupervised learning in astronomy
Abstract
Galaxy morphology is a fundamental quantity, that is essential not only for the full spectrum of galaxy-evolution studies, but also for a plethora of science in observational cosmology. While a rich literature exists on morphological-classification techniques, the unprecedented data volumes, coupled, in some cases, with the short cadences of forthcoming 'Big-Data' surveys (e.g. from the LSST), present novel challenges for this field. Large data volumes make such datasets intractable for visual inspection (even via massively-distributed platforms like Galaxy Zoo), while short cadences make it difficult to employ techniques like supervised machine-learning, since it may be impractical to repeatedly produce training sets on short timescales. Unsupervised machine learning, which does not require training sets, is ideally suited to the morphological analysis of new and forthcoming surveys.…
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