CC-RAG: Structured Multi-Hop Reasoning via Theme-Based Causal Graphs
CC-RAG: Structured Multi-Hop Reasoning via Theme-Based Causal Graphs
Understanding cause and effect relationships remains a formidable challenge for Large Language Models (LLMs), particularly in specialized domains where reasoning requires more than surface-level correlations. Retrieval-Augmented Generation (RAG) improves factual accuracy, but standard RAG pipelines treat evidence as flat context, lacking the structure required to model true causal dependencies. We introduce Causal-Chain RAG (CC-RAG), a novel approach that integrates zero-shot triple extraction and theme-aware graph chaining into the RAG pipeline, enabling structured multi-hop inference. Given a domain specific corpus, CC-RAG constructs a Directed Acyclic Graph (DAG) of <cause, relation, effect> triples and uses forward/backward chaining to guide structured answer generation. Experiments on two real-world domains: Bitcoin price fluctuations and Gaucher disease, show that CC-RAG outperforms standard RAG and zero-shot LLMs in chain similarity, information density, and lexical diversity. Both LLM-as-a-Judge and human evaluations consistently favor CC-RAG. Our results demonstrate that explicitly modeling causal structure enables LLMs to generate more accurate and interpretable responses, especially in specialized domains where flat retrieval fails.
Jash Rajesh Parekh、Pengcheng Jiang、Jiawei Han
生物科学研究方法、生物科学研究技术
Jash Rajesh Parekh,Pengcheng Jiang,Jiawei Han.CC-RAG: Structured Multi-Hop Reasoning via Theme-Based Causal Graphs[EB/OL].(2025-06-09)[2025-07-02].https://arxiv.org/abs/2506.08364.点此复制
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