13
0

Hierarchical Lexical Graph for Enhanced Multi-Hop Retrieval

Abstract

Retrieval-Augmented Generation (RAG) grounds large language models in external evidence, yet it still falters when answers must be pieced together across semantically distant documents. We close this gap with the Hierarchical Lexical Graph (HLG), a three-tier index that (i) traces every atomic proposition to its source, (ii) clusters propositions into latent topics, and (iii) links entities and relations to expose cross-document paths. On top of HLG we build two complementary, plug-and-play retrievers: StatementGraphRAG, which performs fine-grained entity-aware beam search over propositions for high-precision factoid questions, and TopicGraphRAG, which selects coarse topics before expanding along entity links to supply broad yet relevant context for exploratory queries. Additionally, existing benchmarks lack the complexity required to rigorously evaluate multi-hop summarization systems, often focusing on single-document queries or limited datasets. To address this, we introduce a synthetic dataset generation pipeline that curates realistic, multi-document question-answer pairs, enabling robust evaluation of multi-hop retrieval systems. Extensive experiments across five datasets demonstrate that our methods outperform naive chunk-based RAG achieving an average relative improvement of 23.1% in retrieval recall and correctness. Open-source Python library is available atthis https URL.

View on arXiv
@article{ghassel2025_2506.08074,
  title={ Hierarchical Lexical Graph for Enhanced Multi-Hop Retrieval },
  author={ Abdellah Ghassel and Ian Robinson and Gabriel Tanase and Hal Cooper and Bryan Thompson and Zhen Han and Vassilis N. Ioannidis and Soji Adeshina and Huzefa Rangwala },
  journal={arXiv preprint arXiv:2506.08074},
  year={ 2025 }
}
Comments on this paper