Millions of $\text{GeAR}$-s: Extending GraphRAG to Millions of Documents
By: Zhili Shen , Chenxin Diao , Pascual Merita and more
Potential Business Impact:
Helps computers find better answers using connected facts.
Recent studies have explored graph-based approaches to retrieval-augmented generation, leveraging structured or semi-structured information -- such as entities and their relations extracted from documents -- to enhance retrieval. However, these methods are typically designed to address specific tasks, such as multi-hop question answering and query-focused summarisation, and therefore, there is limited evidence of their general applicability across broader datasets. In this paper, we aim to adapt a state-of-the-art graph-based RAG solution: $\text{GeAR}$ and explore its performance and limitations on the SIGIR 2025 LiveRAG Challenge.
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