Recent works explore learning graph representations in a self-supervised manner. In graph contrastive learning, benchmark methods apply various graph augmentation approaches. However, most of the augmentation methods are non-learnable, which causes the issue of generating unbeneficial augmented graphs. Such augmentation may degenerate the representation ability of graph contrastive learning methods. Therefore, we motivate our method to generate augmented graph by a learnable graph augmenter, called MEta Graph Augmentation (MEGA). We then clarify that a "good" graph augmentation must have uniformity at the instance-level and informativeness at the feature-level. To this end, we propose a novel approach to learning a graph augmenter that can ...
Graph contrastive learning (GCL) emerges as the most representative approach for graph representatio...
We study the knowledge extrapolation problem to embed new components (i.e., entities and relations) ...
Many important problems in machine learning and data mining, such as knowledge base reasoning, perso...
Self-Supervised learning aims to eliminate the need for expensive annotation in graph representation...
Self-supervised learning methods became a popular approach for graph representation learning because...
Recent years, graph contrastive learning (GCL), which aims to learn representations from unlabeled g...
Graph is a type of structured data to describe the multiple objects as well as their relationships, ...
Given a graph dataset, how can we generate meaningful graph representations that maximize classifica...
Contrastive learning is an effective unsupervised method in graph representation learning. Recently,...
Graph contrastive learning (GCL) improves graph representation learning, leading to SOTA on various ...
Recent analyses of self-supervised learning (SSL) find the following data-centric properties to be c...
Given a graph dataset, how can we generate meaningful graph representations that maximize classifica...
Graph classification is a widely studied problem and has broad applications. In many real-world prob...
Graph Neural Networks (GNNs) have become the state-of-the-art method for many applications on graph ...
Graph contrastive learning (GCL) is the most representative and prevalent self-supervised learning a...
Graph contrastive learning (GCL) emerges as the most representative approach for graph representatio...
We study the knowledge extrapolation problem to embed new components (i.e., entities and relations) ...
Many important problems in machine learning and data mining, such as knowledge base reasoning, perso...
Self-Supervised learning aims to eliminate the need for expensive annotation in graph representation...
Self-supervised learning methods became a popular approach for graph representation learning because...
Recent years, graph contrastive learning (GCL), which aims to learn representations from unlabeled g...
Graph is a type of structured data to describe the multiple objects as well as their relationships, ...
Given a graph dataset, how can we generate meaningful graph representations that maximize classifica...
Contrastive learning is an effective unsupervised method in graph representation learning. Recently,...
Graph contrastive learning (GCL) improves graph representation learning, leading to SOTA on various ...
Recent analyses of self-supervised learning (SSL) find the following data-centric properties to be c...
Given a graph dataset, how can we generate meaningful graph representations that maximize classifica...
Graph classification is a widely studied problem and has broad applications. In many real-world prob...
Graph Neural Networks (GNNs) have become the state-of-the-art method for many applications on graph ...
Graph contrastive learning (GCL) is the most representative and prevalent self-supervised learning a...
Graph contrastive learning (GCL) emerges as the most representative approach for graph representatio...
We study the knowledge extrapolation problem to embed new components (i.e., entities and relations) ...
Many important problems in machine learning and data mining, such as knowledge base reasoning, perso...