The performance of graph representation learning is affected by the quality of graph input. While existing research usually pursues a globally smoothed graph embedding, we believe the rarely observed anomalies are as well harmful to an accurate prediction. This work establishes a graph learning scheme that automatically detects (locally) corrupted feature attributes and recovers robust embedding for prediction tasks. The detection operation leverages a graph autoencoder, which does not make any assumptions about the distribution of the local corruptions. It pinpoints the positions of the anomalous node attributes in an unbiased mask matrix, where robust estimations are recovered with sparsity promoting regularizer. The optimizer approaches ...
Recent years have witnessed a proliferation of graph representation techniques in social network ana...
With the rapid development of computer network technology, we can acquire a large amount of multimed...
Graph representation learning serves as the core of many important tasks on graphs, ranging from fri...
Graph embedding aims to transfer a graph into vectors to facilitate subsequent graph-analytics tasks...
Graph embedding methods are useful for a wide range of graph analysis tasks including link predictio...
In this work, we study the phenomenon of catastrophic forgetting in the graph representation learnin...
© 2018 International Joint Conferences on Artificial Intelligence. All right reserved. Graph embeddi...
Graph structures are a powerful abstraction of many real-world data, such as human interactions and ...
With the great success of graph embedding model on both academic and industry area, the robustness o...
Self-supervised learning methods became a popular approach for graph representation learning because...
Exploring unknown environments is a fundamental task in many domains, e.g., robot navigation, networ...
Uncovering subgraphs with an abnormal distribution of at-tributes reveals much insight into network ...
International audiencePrevious security research efforts orbiting around graphs have been exclusivel...
Non-negative data factorization has been widely used re-cently. However, existing techniques, such a...
The prevailing graph neural network models have achieved significant progress in graph representatio...
Recent years have witnessed a proliferation of graph representation techniques in social network ana...
With the rapid development of computer network technology, we can acquire a large amount of multimed...
Graph representation learning serves as the core of many important tasks on graphs, ranging from fri...
Graph embedding aims to transfer a graph into vectors to facilitate subsequent graph-analytics tasks...
Graph embedding methods are useful for a wide range of graph analysis tasks including link predictio...
In this work, we study the phenomenon of catastrophic forgetting in the graph representation learnin...
© 2018 International Joint Conferences on Artificial Intelligence. All right reserved. Graph embeddi...
Graph structures are a powerful abstraction of many real-world data, such as human interactions and ...
With the great success of graph embedding model on both academic and industry area, the robustness o...
Self-supervised learning methods became a popular approach for graph representation learning because...
Exploring unknown environments is a fundamental task in many domains, e.g., robot navigation, networ...
Uncovering subgraphs with an abnormal distribution of at-tributes reveals much insight into network ...
International audiencePrevious security research efforts orbiting around graphs have been exclusivel...
Non-negative data factorization has been widely used re-cently. However, existing techniques, such a...
The prevailing graph neural network models have achieved significant progress in graph representatio...
Recent years have witnessed a proliferation of graph representation techniques in social network ana...
With the rapid development of computer network technology, we can acquire a large amount of multimed...
Graph representation learning serves as the core of many important tasks on graphs, ranging from fri...