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UniGraph: Learning a Unified Cross-Domain Foundation Model for Text-Attributed Graphs

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Foundation models like ChatGPT and GPT-4 have revolutionized artificial intelligence, exhibiting remarkable abilities to generalize across a wide array of tasks and applications beyond their initial training objectives. However, graph learning has predominantly focused on single-graph models, tailored to specific tasks or datasets, lacking the ability to transfer learned knowledge to different domains. This limitation stems from the inherent complexity and diversity of graph structures, along with the different feature and label spaces specific to graph data. In this paper, we recognize text as an effective unifying medium and employ Text-Attributed Graphs (TAGs) to leverage this potential. We present our UniGraph framework, designed to learn a foundation model for TAGs, which is capable of generalizing to unseen graphs and tasks across diverse domains. Unlike single-graph models that use pre-computed node features of varying dimensions as input, our approach leverages textual features for unifying node representations, even for graphs such as molecular graphs that do not naturally have textual features. We propose a novel cascaded architecture of Language Models (LMs) and Graph Neural Networks (GNNs) as backbone networks. Additionally, we propose the first pre-training algorithm specifically designed for large-scale self-supervised learning on TAGs, based on Masked Graph Modeling. We introduce graph instruction tuning using Large Language Models (LLMs) to enable zero-shot prediction ability. Our comprehensive experiments across various graph learning tasks and domains demonstrate the model's effectiveness in self-supervised representation learning on unseen graphs, few-shot in-context transfer, and zero-shot transfer, even surpassing or matching the performance of GNNs that have undergone supervised training on target datasets.

Yufei He, Yuan Sui, Xiaoxin He, Bryan Hooi• 2024

Related benchmarks

TaskDatasetResultRank
Node ClassificationPubmed
Accuracy85.25
396
Node ClassificationCiteseer
Accuracy56.3
393
Node ClassificationwikiCS
Accuracy75.08
317
Node ClassificationOgbn-arxiv
Accuracy71.25
206
Graph ClassificationHIV
ROC-AUC0.684
104
Graph ClassificationPubmed
Accuracy71.4
101
Graph ClassificationCiteseer
Accuracy64
99
Graph ClassificationWiki CS
Accuracy58.9
96
Node ClassificationOGBN-Products
Accuracy61
62
Node ClassificationCora
Accuracy74.8
38
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