Leveraging Natural Language Processing and Machine Learning for Evidence-Based Food Security Policy Decision-Making in Data-Scarce Making
arXiv cs.AI / 2026/3/24
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要点
- The paper introduces ZeroHungerAI, an integrated NLP and ML framework for evidence-based food security policy modeling in data-scarce, text-fragmented regions.
- It uses transfer learning with a DistilBERT-based approach to combine structured socio-economic indicators with contextual policy text embeddings.
- On a 1,200-sample hybrid dataset covering 25 districts, the method achieves strong results under class imbalance, including 91% classification accuracy, 0.89 precision, 0.85 recall, and 0.86 F1.
- Comparative experiments show 13% improvement over SVM and 17% over Logistic Regression, with precision-recall metrics indicating reliable minority-class detection.
- A fairness-aware optimization step reduces demographic parity differences to 3%, supporting more equitable rural–urban policy inference.
