Beyond Explicit Edges: Robust Reasoning over Noisy and Sparse Knowledge Graphs
arXiv cs.CL / 3/17/2026
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Key Points
- The paper addresses the limitations of reasoning over noisy, sparse, or incomplete knowledge graphs by introducing INSES, a dynamic framework that goes beyond relying solely on explicit edges.
- INSES combines LLM-guided navigation to prune noise with embedding-based similarity expansion to recover hidden links and bridge semantic gaps for improved multi-hop reasoning.
- A lightweight router balances efficiency and depth by routing simple queries to Naive RAG and escalating complex ones to INSES.
- On the MINE benchmark, INSES outperforms SOTA RAG and GraphRAG baselines, with robustness gains across KGGEN, GraphRAG, and OpenIE methods of 5%, 10%, and 27%, respectively.
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