cloonicux/Feature-Engineering-Framework-For-Traffic-Accident-Prediction-using-XAI
This project predicts traffic accident severity using the 2023 STATS19 dataset. It employs machine learning and LIME to not only forecast outcomes like 'Fatal' or 'Slight' but also to provide clear, understandable explanations for its predictions, creating a powerful tool for enhancing road safety.
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Sep 13, 2025
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