TL;DR
This paper introduces an unsupervised feature learning algorithm for variable stars that automatically extracts and clusters lightcurve patterns, reducing computational costs and improving classification performance compared to traditional handcrafted features.
Contribution
It presents the first unsupervised feature learning method for variable stars, leveraging clustering of subsequences to create effective representations for classification.
Findings
Achieves comparable or better classification accuracy than traditional features.
Reduces computational cost significantly.
Works with both labeled and unlabeled lightcurves.
Abstract
The success of automatic classification of variable stars strongly depends on the lightcurve representation. Usually, lightcurves are represented as a vector of many statistical descriptors designed by astronomers called features. These descriptors commonly demand significant computational power to calculate, require substantial research effort to develop and do not guarantee good performance on the final classification task. Today, lightcurve representation is not entirely automatic; algorithms that extract lightcurve features are designed by humans and must be manually tuned up for every survey. The vast amounts of data that will be generated in future surveys like LSST mean astronomers must develop analysis pipelines that are both scalable and automated. Recently, substantial efforts have been made in the machine learning community to develop methods that prescind from…
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