TL;DR
This survey reviews recent advances in applying large language models to graph learning, categorizing methods, analyzing strengths and limitations, and suggesting future research directions to enhance performance in graph-related tasks.
Contribution
It introduces a novel taxonomy for LLM-based graph learning methods and provides a comprehensive analysis of their frameworks and challenges.
Findings
Four unique LLM-graph integration frameworks identified
Analysis of strengths and limitations of each framework
Guidance on future research directions in LLM-graph integration
Abstract
Graphs are an essential data structure utilized to represent relationships in real-world scenarios. Prior research has established that Graph Neural Networks (GNNs) deliver impressive outcomes in graph-centric tasks, such as link prediction and node classification. Despite these advancements, challenges like data sparsity and limited generalization capabilities continue to persist. Recently, Large Language Models (LLMs) have gained attention in natural language processing. They excel in language comprehension and summarization. Integrating LLMs with graph learning techniques has attracted interest as a way to enhance performance in graph learning tasks. In this survey, we conduct an in-depth review of the latest state-of-the-art LLMs applied in graph learning and introduce a novel taxonomy to categorize existing methods based on their framework design. We detail four unique designs: i)…
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