Learning low-dimensional representations of networks has proved effective in a variety of tasks such as node classification, link prediction and network visualization. Existing methods can effectively encode different structural properties into the representations, such as neighborhood connectivity patterns, global structural role similarities and other high-order proximities. However, except for objectives to capture network structural properties, most of them suffer from lack of additional constraints for enhancing the robustness of representations. In this paper, we aim to exploit the strengths of generative adversarial networks in capturing latent features, and investigate its contribution in learning stable and robust graph representat...
In today's networked society, many real-world problems can be formalized as predicting links in netw...
Network representation learning methods map network nodes to vectors in an embedding space that can ...
Link prediction, as an important research direction in complicated network analysis, has broad appli...
Learning low-dimensional representations of networks has proved effective in a variety of tasks such...
Graph embedding aims to transfer a graph into vectors to facilitate subsequent graph-analytics tasks...
© 2018 International Joint Conferences on Artificial Intelligence. All right reserved. Graph embeddi...
The goal of graph representation learning is to embed each vertex in a graph into a low-dimensional ...
With the superiority of representation learning with deep learning being well demonstrated across va...
In this review I present several representation learning methods, and discuss the latest advancement...
Graph representation learning serves as the core of many important tasks on graphs, ranging from fri...
Real-world information networks are increasingly occurring across various disciplines including onli...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
Graph Nerual Networks (GNNs) are effective models in graph embedding. It extracts shallow features a...
Recent years have witnessed a proliferation of graph representation techniques in social network ana...
A multitude of important real-world or synthetic systems possess network structures. Extending learn...
In today's networked society, many real-world problems can be formalized as predicting links in netw...
Network representation learning methods map network nodes to vectors in an embedding space that can ...
Link prediction, as an important research direction in complicated network analysis, has broad appli...
Learning low-dimensional representations of networks has proved effective in a variety of tasks such...
Graph embedding aims to transfer a graph into vectors to facilitate subsequent graph-analytics tasks...
© 2018 International Joint Conferences on Artificial Intelligence. All right reserved. Graph embeddi...
The goal of graph representation learning is to embed each vertex in a graph into a low-dimensional ...
With the superiority of representation learning with deep learning being well demonstrated across va...
In this review I present several representation learning methods, and discuss the latest advancement...
Graph representation learning serves as the core of many important tasks on graphs, ranging from fri...
Real-world information networks are increasingly occurring across various disciplines including onli...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
Graph Nerual Networks (GNNs) are effective models in graph embedding. It extracts shallow features a...
Recent years have witnessed a proliferation of graph representation techniques in social network ana...
A multitude of important real-world or synthetic systems possess network structures. Extending learn...
In today's networked society, many real-world problems can be formalized as predicting links in netw...
Network representation learning methods map network nodes to vectors in an embedding space that can ...
Link prediction, as an important research direction in complicated network analysis, has broad appli...