Agentic Personas for Adaptive Scientific Explanations with Knowledge Graphs
arXiv cs.AI / 3/24/2026
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Key Points
- The paper argues that existing AI explanation methods, including knowledge-graph path-based explanations, often assume a static user model and therefore fail to adapt to different expert goals, reasoning strategies, and decision contexts.
- It proposes a reinforcement learning framework for scientific explanation generation that uses “agentic personas” plus structured representations of expert reasoning strategies to steer the explanation agent toward specific epistemic preferences.
- In a drug-discovery evaluation using knowledge graph-based explanations, the authors test two persona types derived from expert feedback and find persona-driven explanations achieve state-of-the-art predictive performance.
- The results show strong alignment between persona preferences and the corresponding experts, with adaptive explanations preferred over non-adaptive baselines and a reported two-orders-of-magnitude reduction in feedback needs for training.
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