Improving the discovery of near-Earth objects with machine-learning methods
Peter Vere\v{s}, Richard Cloete, Matthew J. Payne, and Abraham Loeb

TL;DR
This paper enhances near-Earth object discovery efficiency by analyzing digest2 parameters and applying machine learning models, reducing false positives by over 80% while maintaining high NEO detection rates.
Contribution
It introduces a combined filtering and machine learning approach to significantly improve NEO candidate selection accuracy.
Findings
Achieved over 80% reduction in non-NEO candidates on NEOCP.
Maintained only 5.5% loss in true NEO detections.
Machine learning models reached approximately 95% precision.
Abstract
We present a comprehensive analysis of the digest2 parameters for candidates of the Near-Earth Object Confirmation Page (NEOCP) that were reported between 2019 and 2024. Our study proposes methods for significantly reducing the inclusion of non-NEO objects on the NEOCP. Despite the substantial increase in near-Earth object (NEO) discoveries in recent years, only about half of the NEOCP candidates are ultimately confirmed as NEOs. Therefore, much observing time is spent following up on non-NEOs. Furthermore, approximately 11% of the candidates remain unconfirmed because the follow-up observations are insufficient. These are nearly 600 cases per year. To reduce false positives and minimize wasted resources on non-NEOs, we refine the posting criteria for NEOCP based on a detailed analysis of all digest2 scores. We investigated 30 distinct digest2 parameter categories for candidates that…
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