The issue of distribution shifts is emerging as a critical concern in graph representation learning. From the perspective of invariant learning and stable learning, a recently well …
Many real-world datasets can be naturally represented as graphs, spanning a wide range of domains. However, the increasing complexity and size of graph datasets present significant …
Abstract Recent studies on Graph Neural Networks (GNNs) provide both empirical and theoretical evidence supporting their effectiveness in capturing structural patterns on both …
Data augmentation has recently seen increased interest in graph machine learning given its demonstrated ability to improve model performance and generalization by added training …
Graph machine learning has been extensively studied in both academia and industry. Although booming with a vast number of emerging methods and techniques, most of the …
M Ju, T Zhao, W Yu, N Shah… - Advances in Neural …, 2024 - proceedings.neurips.cc
Recent studies have shown that graph neural networks (GNNs) exhibit strong biases towards the node degree: they usually perform satisfactorily on high-degree nodes with rich …
Invariant graph representation learning aims to learn the invariance among data from different environments for out-of-distribution generalization on graphs. As the graph …
Transfer learning on graphs drawn from varied distributions (domains) is in great demand across many applications. Emerging methods attempt to learn domain-invariant …
Y Guo, C Yang, Y Chen, J Liu, C Shi, J Du - Proceedings of the 29th …, 2023 - dl.acm.org
Out-of-distribution (OOD) detection, which aims to identify OOD samples from in-distribution (ID) ones in test time, has become an essential problem in machine learning. However …