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When to Trust: A Causality-Aware Calibration Framework for Accurate Knowledge Graph Retrieval-Augmented Generation
A framework that calibrates knowledge graph retrieval-augmented generation models.
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By Jing Ren, Bowen Li, Ziqi Xu, Xikun Zhang, Haytham M. Fayek, Xiaodong Li
Read original article →The paper proposes Ca2KG, a causality-aware calibration framework for KG-RAG. It integrates counterfactual prompting and a panel-based re-scoring mechanism to improve calibration while maintaining predictive accuracy. Experiments on two QA datasets demonstrate the effectiveness of Ca2KG.
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