Published February 6, 2026
| Version 1
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Near-Earth Object Risk Scoring Using Classical Machine Learning
Authors/Creators
- 1. Department of Artificial Intelligence and Data Science, Miracle Educational Society Group of Institutions
Description
This work presents a conservative, methodological study comparing classical machine-learning classifiers with the standard rule-based definition of Potentially Hazardous Objects (PHOs) using publicly available Near-Earth Object data from NASA CNEOS and the JPL Small-Body Database. The study emphasizes interpretability, reproducibility, and limited scope, and does not make claims regarding impact prediction or real-world hazard assessment. This preprint is shared to enable early access while awaiting archival posting.
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NEO_ML.pdf
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