MDER-DR: Multi-Hop Question Answering with Entity-Centric Summaries
arXiv cs.AI / 3/13/2026
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Key Points
- The paper presents MDER-DR, a KG-based QA framework designed to improve multi-hop question answering by preserving contextual nuance with context-derived triple descriptions and entity-level summaries, removing the need for explicit graph-edge traversal during retrieval.
- It combines Map-Disambiguate-Enrich-Reduce (MDER) for indexing, which generates enriched triple descriptions, with Decompose-Resolve (DR) as a retrieval mechanism that decomposes queries into resolvable triples and grounds them in the KG via iterative reasoning.
- The proposed pipeline is domain-agnostic and LLM-driven, showing substantial improvements over standard RAG baselines (up to 66%) and demonstrating cross-lingual robustness on both standard and domain-specific benchmarks.
- The authors provide open-source code at GitHub to facilitate replication and adaptation to various KG-based QA scenarios.
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