Agentic Personas for Adaptive Scientific Explanations with Knowledge Graphs

arXiv cs.AI / 2026/3/24

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要点

  • 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.

Abstract

AI explanation methods often assume a static user model, producing non-adaptive explanations regardless of expert goals, reasoning strategies, or decision contexts. Knowledge graph-based explanations, despite their capacity for grounded, path-based reasoning, inherit this limitation. In complex domains such as scientific discovery, this assumption fails to capture the diversity of cognitive strategies and epistemic stances among experts, preventing explanations that foster deeper understanding and informed decision-making. However, the scarcity of human experts limits the use of direct human feedback to produce adaptive explanations. We present a reinforcement learning approach for scientific explanation generation that incorporates agentic personas, structured representations of expert reasoning strategies, that guide the explanation agent towards specific epistemic preferences. In an evaluation of knowledge graph-based explanations for drug discovery, we tested two personas that capture distinct epistemic stances derived from expert feedback. Results show that persona-driven explanations match state-of-the-art predictive performance while persona preferences closely align with those of their corresponding experts. Adaptive explanations were consistently preferred over non-adaptive baselines (n = 22), and persona-based training reduces feedback requirements by two orders of magnitude. These findings demonstrate how agentic personas enable scalable adaptive explainability for AI systems in complex and high-stakes domains.