Given a resource-rich source graph and a resource-scarce target graph, how can we effectively transfer knowledge across graphs and ensure a good generalization performance? In many high-impact domains (e.g., brain networks and molecular graphs), collecting and annotating data is prohibitively expensive and time-consuming, which makes domain adaptation an attractive option to alleviate the label scarcity issue. In light of this, the state-of-the-art methods focus on deriving domain-invariant graph representation that minimizes the domain discrepancy. However, it has recently been shown that a small domain discrepancy loss may not always guarantee a good generalization performance, especially in the presence of disparate graph structures and ...
Graphs provide a ubiquitous and universal data structure that can be applied in many domains such as...
We investigate the potential of graph neural networks for transfer learning and improving molecular ...
Graph-based deep learning has been successful in various industrial settings and applications. Howev...
Transfer learning refers to the transfer of knowledge or information from a relevant source domain t...
Unsupervised domain adaptation has caught appealing attentions as it facilitates the unlabeled targe...
Transfer learning across graphs drawn from different distributions (domains) is in great demand acro...
Graph convolutional networks (GCNs) have achieved impressive success in many graph related analytics...
Data continuously emitted from industrial ecosystems such as social or commerce platforms are common...
The world has never been more connected, led by the information technology revolution in the past de...
To leverage machine learning in any decision-making process, one must convert the given knowledge (f...
Heterogeneous graph representation learning aims to learn low-dimensional vector representations of ...
Label scarcity in a graph is frequently encountered in real-world applications due to the high cost ...
Traditional machine learning algorithms assume that the training and test data have the same distrib...
Graph Neural Networks (GNNs) have garnered considerable interest due to their exceptional performanc...
Abstract-Traditional data mining and machine learning technologies may fail when the training data a...
Graphs provide a ubiquitous and universal data structure that can be applied in many domains such as...
We investigate the potential of graph neural networks for transfer learning and improving molecular ...
Graph-based deep learning has been successful in various industrial settings and applications. Howev...
Transfer learning refers to the transfer of knowledge or information from a relevant source domain t...
Unsupervised domain adaptation has caught appealing attentions as it facilitates the unlabeled targe...
Transfer learning across graphs drawn from different distributions (domains) is in great demand acro...
Graph convolutional networks (GCNs) have achieved impressive success in many graph related analytics...
Data continuously emitted from industrial ecosystems such as social or commerce platforms are common...
The world has never been more connected, led by the information technology revolution in the past de...
To leverage machine learning in any decision-making process, one must convert the given knowledge (f...
Heterogeneous graph representation learning aims to learn low-dimensional vector representations of ...
Label scarcity in a graph is frequently encountered in real-world applications due to the high cost ...
Traditional machine learning algorithms assume that the training and test data have the same distrib...
Graph Neural Networks (GNNs) have garnered considerable interest due to their exceptional performanc...
Abstract-Traditional data mining and machine learning technologies may fail when the training data a...
Graphs provide a ubiquitous and universal data structure that can be applied in many domains such as...
We investigate the potential of graph neural networks for transfer learning and improving molecular ...
Graph-based deep learning has been successful in various industrial settings and applications. Howev...