Subgraph Gaussian Embedding Contrast for Self-Supervised Graph Representation Learning
Journal:
arXiv
Published Date:
May 29, 2025
Abstract
Graph Representation Learning (GRL) is a fundamental task in machine
learning, aiming to encode high-dimensional graph-structured data into
low-dimensional vectors. Self-Supervised Learning (SSL) methods are widely used
in GRL because they can avoid expensive human annotation. In this work, we
propose a novel Subgraph Gaussian Embedding Contrast (SubGEC) method. Our
approach introduces a subgraph Gaussian embedding module, which adaptively maps
subgraphs to a structured Gaussian space, ensuring the preservation of input
subgraph characteristics while generating subgraphs with a controlled
distribution. We then employ optimal transport distances, more precisely the
Wasserstein and Gromov-Wasserstein distances, to effectively measure the
similarity between subgraphs, enhancing the robustness of the contrastive
learning process. Extensive experiments across multiple benchmarks demonstrate
that \method~outperforms or presents competitive performance against
state-of-the-art approaches. Our findings provide insights into the design of
SSL methods for GRL, emphasizing the importance of the distribution of the
generated contrastive pairs.