Enhanced Drug-drug Interaction Prediction Using Adaptive Knowledge Integration
arXiv cs.LG / 3/16/2026
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Key Points
- The paper proposes a knowledge augmentation framework that adaptively infuses prior drug knowledge into a large language model to improve DDIE prediction accuracy.
- It employs reinforcement learning to guide adaptive knowledge extraction and synthesis, optimizing the strategy space for LLM-based DDIE predictions.
- The method tackles imbalanced datasets and generalization to unknown drug combinations, achieving notable improvements in few-shot learning over baselines.
- This work provides a framework for scientific knowledge learning in DDIE prediction with potential implications for AI-assisted pharmacovigilance and drug safety.
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