Variable Star Classification Using Multi-View Metric Learning

November 13, 2019 ยท Declared Dead ยท ๐Ÿ› Monthly notices of the Royal Astronomical Society

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Authors K. B. Johnston, S. M. Caballero-Nieves, V. Petit, A. M. Peter, R. Haber arXiv ID 1911.05821 Category astro-ph.IM Cross-listed cs.CV Citations 6 Venue Monthly notices of the Royal Astronomical Society Last Checked 1 month ago
Abstract
Our multi-view metric learning framework enables robust characterization of star categories by directly learning to discriminate in a multi-faceted feature space, thus, eliminating the need to combine feature representations prior to fitting the machine learning model. We also demonstrate how to extend standard multi-view learning, which employs multiple vectorized views, to the matrix-variate case which allows very novel variable star signature representations. The performance of our proposed methods is evaluated on the UCR Starlight and LINEAR datasets. Both the vector and matrix-variate versions of our multi-view learning framework perform favorably --- demonstrating the ability to discriminate variable star categories.
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