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arxiv:2511.08638

Pattern Recognition of Scrap Plastic Misclassification in Global Trade Data

Published on Nov 10, 2025

Abstract

An interpretable machine learning framework identifies trade data discrepancies through inverse price-volume signatures, achieving high accuracy when validated against large-scale UN and firm-level data comparisons.

AI-generated summary

We propose an interpretable machine learning framework to help identify trade data discrepancies that are challenging to detect with traditional methods. Our system analyzes trade data to find a novel inverse price-volume signature, a pattern where reported volumes increase as average unit prices decrease. The model achieves 0.9375 accuracy and was validated by comparing large-scale UN data with detailed firm-level data, confirming that the risk signatures are consistent. This scalable tool provides customs authorities with a transparent, data-driven method to shift from conventional to priority-based inspection protocols, translating complex data into actionable intelligence to support international environmental policies.

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