GATech at AbjadMed: Bidirectional Encoders vs. Causal Decoders: Insights from 82-Class Arabic Medical Classification
arXiv cs.AI / 3/12/2026
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Key Points
- The paper outlines a system for Arabic medical text classification across 82 categories, driven by a fine-tuned AraBERTv2 encoder with hybrid attention/mean pooling and multi-sample dropout for robust regularization.
- It benchmarks this bidirectional encoder setup against multilingual and Arabic-specific encoders and against large-scale causal decoders, including Llama 3.3 70B zero-shot re-ranking and Qwen 3B hidden-state features.
- The results indicate that specialized bidirectional encoders outperform causal decoders for fine-grained classification by better capturing global semantic context.
- It notes that causal decoders, optimized for next-token prediction, produce sequence-biased embeddings that are less effective for categorization, especially given data imbalance and label noise.
- Final results on the test set report metrics such as Accuracy and Macro-F1, highlighting the superiority of fine-tuned encoders for specialized Arabic NLP tasks.
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