博士资格考试

A Survey on Graph-Enhanced Retrieval-Augmented Generation

The Hong Kong University of Science and Technology (Guangzhou)

数据科学与分析学域

PhD Qualifying Examination

By Mr. TONG Bing

摘要

Large Language Models (LLMs) have demonstrated impressive performance across a wide range of natural language processing tasks. However, they continue to suffer from key limitations, including hallucinations and a lack of up-to-date or domain-specific knowledge. Retrieval-Augmented Generation (RAG) frameworks mitigate these issues by incorporating external knowledge sources, yet conventional RAG systems often rely on flat document representations, which lack explicit semantic relationships and hinder deep reasoning. To address these shortcomings, recent approaches have proposed integrating structured graph representations into the RAG pipeline, giving rise to a new class of systems known as GraphRAG. In this survey, we categorize GraphRAG systems into three core components: knowledge organization, knowledge retrieval, and knowledge integration. We analyze how each component contributes to more reliable and interpretable generation. Furthermore, we provide an in depth review of three representative systems—GraphRAG (Microsoft), LightRAG, and FastRAG—highlighting their architectures, innovations, and trade-offs. This survey aims to consolidate the emerging landscape of graph-based RAG methods and offers insights for future research and deployment in knowledge-intensive domains.

PQE Committee

Chair of Committee: Prof. CHEN Lei

Prime Supervisor: Prof. LI Jia

Co-Supervisor: Prof. ZHANG Chen

Examiner: Prof. TANG Jing

日期

09 June 2025

时间

17:00:00 - 18:00:00

地点

E1-149 (HKUST-GZ)