Machine Learning Methods for Automated Interstellar Object Classification with LSST
Richard Cloete, Peter Vere\v{s}, Abraham Loeb

TL;DR
This paper explores machine learning algorithms to automate the classification of interstellar objects in LSST data, demonstrating high accuracy and laying groundwork for efficient ISO discovery and study.
Contribution
It compares various machine learning methods, identifying GBM and RF as most effective for ISO classification in simulated LSST data.
Findings
GBM achieves F1 score of 0.9987.
RF analysis highlights Digest2 importance.
Machine learning enhances ISO detection efficiency.
Abstract
The Legacy Survey of Space and Time, to be conducted with the Vera C. Rubin Observatory, is poised to revolutionize our understanding of the Solar System by providing an unprecedented wealth of data on various objects, including the elusive interstellar objects (ISOs). Detecting and classifying ISOs is crucial for studying the composition and diversity of materials from other planetary systems. However, the rarity and brief observation windows of ISOs, coupled with the vast quantities of data to be generated by LSST, create significant challenges for their identification and classification. This study aims to address these challenges by exploring the application of machine learning algorithms to the automated classification of ISO tracklets in simulated LSST data. We employed various machine learning algorithms, including random forests (RFs), stochastic gradient descent (SGD), gradient…
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Taxonomy
MethodsStochastic Gradient Descent
