Effectively using unsupervised machine learning in next generation astronomical surveys
Itamar Reis, Michael Rotman, Dovi Poznanski, J. Xavier Prochaska, Lior, Wolf

TL;DR
This paper presents an interactive visualization portal that leverages multiple unsupervised machine learning methods to explore large astronomical datasets, facilitating the discovery of unusual objects and trends without relying on a single optimal solution.
Contribution
The authors introduce a novel data visualization portal that incorporates diverse unsupervised ML techniques to generate multiple perspectives on astronomical data, enhancing exploratory analysis.
Findings
Interactive 2D maps help detect peculiar objects.
Different dimensionality reduction methods reveal varied data insights.
The portal enables efficient exploration of complex datasets.
Abstract
In recent years many works have shown that unsupervised Machine Learning (ML) can help detect unusual objects and uncover trends in large astronomical datasets, but a few challenges remain. We show here, for example, that different methods, or even small variations of the same method, can produce significantly different outcomes. While intuitively somewhat surprising, this can naturally occur when applying unsupervised ML to highly dimensional data, where there can be many reasonable yet different answers to the same question. In such a case the outcome of any single unsupervised ML method should be considered a sample from a conceivably wide range of possibilities. We therefore suggest an approach that eschews finding an optimal outcome, instead facilitating the production and examination of many valid ones. This can be achieved by incorporating unsupervised ML into data visualisation…
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