Semi-Supervised Heterogeneous Graph Learning with Multi-level Data Augmentation
Ying Chen, Siwei Qiang, Mingming Ha, Xiaolei Liu, Shaoshuai Li,, Lingfeng Yuan, Xiaobo Guo, and Zhenfeng Zhu

TL;DR
This paper introduces HG-MDA, a novel semi-supervised heterogeneous graph learning method that employs multi-level data augmentation strategies to improve robustness and performance in sparse, complex graphs, with practical applications in finance.
Contribution
The paper proposes a new multi-level data augmentation framework specifically designed for heterogeneous graphs, addressing heterogeneity and over-squashing issues.
Findings
HG-MDA outperforms state-of-the-art models on public datasets.
Application in internet finance increased key users by 30%.
Financial metrics improved significantly with HG-MDA.
Abstract
In recent years, semi-supervised graph learning with data augmentation (DA) is currently the most commonly used and best-performing method to enhance model robustness in sparse scenarios with few labeled samples. Differing from homogeneous graph, DA in heterogeneous graph has greater challenges: heterogeneity of information requires DA strategies to effectively handle heterogeneous relations, which considers the information contribution of different types of neighbors and edges to the target nodes. Furthermore, over-squashing of information is caused by the negative curvature that formed by the non-uniformity distribution and strong clustering in complex graph. To address these challenges, this paper presents a novel method named Semi-Supervised Heterogeneous Graph Learning with Multi-level Data Augmentation (HG-MDA). For the problem of heterogeneity of information in DA, node and…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Advanced Technologies in Various Fields · Recommender Systems and Techniques
