Zero-phase angle asteroid taxonomy classification using unsupervised machine learning algorithms
M. Colazo, A. Alvarez-Candal, and R. Duffard

TL;DR
This paper introduces a new asteroid classification method using unsupervised machine learning on absolute magnitudes, effectively accounting for phase angle variations, and identifies new V-type asteroid candidates.
Contribution
It presents a phase angle-independent asteroid taxonomy classification using fuzzy C-means on absolute magnitudes, improving upon previous color-based methods.
Findings
Classified 6329 asteroids with high confidence
Identified 15 new V-type asteroid candidates outside Vesta region
Demonstrated effectiveness of unsupervised learning for asteroid taxonomy
Abstract
We are in an era of large catalogs and, thus, statistical analysis tools for large data sets, such as machine learning, play a fundamental role. One example of such a survey is the Sloan Moving Object Catalog (MOC), which lists the astrometric and photometric information of all moving objects captured by the Sloan field of view. One great advantage of this telescope is represented by its set of five filters, allowing for taxonomic analysis of asteroids by studying their colors. However, until now, the color variation produced by the change of phase angle of the object has not been taken into account. In this paper, we address this issue by using absolute magnitudes for classification. We aim to produce a new taxonomic classification of asteroids based on their magnitudes that is unaffected by variations caused by the change in phase angle. We selected 9481 asteroids with absolute…
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Taxonomy
TopicsAstro and Planetary Science · Isotope Analysis in Ecology · Mass Spectrometry Techniques and Applications
