Dual Space Graph Contrastive Learning
Haoran Yang, Hongxu Chen, Shirui Pan, Lin Li, Philip S. Yu, Guandong, Xu

TL;DR
This paper introduces DSGC, a novel graph contrastive learning method that leverages both hyperbolic and Euclidean spaces to improve graph representations without relying on graph perturbations.
Contribution
The paper proposes a dual space contrastive learning approach that bridges hyperbolic and Euclidean spaces, enhancing graph representation learning.
Findings
Achieves competitive or superior performance on multiple datasets.
Effectively leverages advantages of both hyperbolic and Euclidean spaces.
Provides insights into the impact of different graph encoders.
Abstract
Unsupervised graph representation learning has emerged as a powerful tool to address real-world problems and achieves huge success in the graph learning domain. Graph contrastive learning is one of the unsupervised graph representation learning methods, which recently attracts attention from researchers and has achieved state-of-the-art performances on various tasks. The key to the success of graph contrastive learning is to construct proper contrasting pairs to acquire the underlying structural semantics of the graph. However, this key part is not fully explored currently, most of the ways generating contrasting pairs focus on augmenting or perturbating graph structures to obtain different views of the input graph. But such strategies could degrade the performances via adding noise into the graph, which may narrow down the field of the applications of graph contrastive learning. In…
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Taxonomy
MethodsContrastive Learning
