Control-based Graph Embeddings with Data Augmentation for Contrastive Learning introduces a novel framework, CGCL, focusing on unsupervised graph representation learning by utilizing control properties and innovative edge augmentation techniques. The paper highlights the importance of preserving controllability features in augmented graphs to enhance graph classification accuracy. The proposed approach outperforms state-of-the-art unsupervised and self-supervised methods across various benchmark datasets, showcasing the effectiveness of incorporating domain-specific structural knowledge in graph representation learning.
The content delves into the significance of network structures and their controllability properties in generating comprehensive graph representations. It explores systematic graph augmentation techniques that preserve network control properties to improve downstream machine-learning tasks. The study emphasizes the role of contrastive learning principles in creating expressive graph representations through control-based features and optimizing similarity between positive pairs.
Furthermore, the paper evaluates the proposed CGCL approach against traditional unsupervised methods like graph kernels and state-of-the-art self-supervised techniques such as InfoGraph and GraphCL. Results demonstrate superior performance of CGCL in multiple datasets, highlighting its potential for enhancing graph representation learning through control-based embeddings and advanced edge augmentation strategies.
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by Obaid Ullah ... a las arxiv.org 03-11-2024
https://arxiv.org/pdf/2403.04923.pdfConsultas más profundas