Graph convolutional networks (GCNs) have been proved to be very practical to handle various graph-related tasks. It has attracted considerable research interest to study deep GCNs, due to their potential superior performance compared with shallow ones. However, simply increasing network depth will, on the contrary, hurt the performance due to the over-smoothing problem. Adding residual connection is proved to be effective for learning deep convolutional neural networks (deep CNNs), it is not trivial when applied to deep GCNs. Recent works proposed an initial residual mechanism that did alleviate the over-smoothing problem in deep GCNs. However, according to our study, their algorithms are quite sensitive to different datasets. In their sett...
Increasing the depth of GCN, which is expected to permit more expressivity, is shown to incur perfor...
International audienceGraph Neural Networks (GNNs) have succeeded in various computer science applic...
In recent years, semi-supervised learning on graphs has gained importance in many fields and applica...
Graph representation learning resurges as a trending research subject owing to the widespread use of...
Many interesting problems in machine learning are being revisited with new deep learning tools. For ...
Graph neural networks (GNNs) have gradually become an important research branch in graph learning si...
Recently, several variants of graph convolution networks (GCNs), which have shown awesome performanc...
The last half-decade has seen a surge in deep learning research on irregular domains and efforts to ...
Effectively detecting anomalous nodes in attributed networks is crucial for the success of many real...
Effectively detecting anomalous nodes in attributed networks is crucial for the success of many real...
Graph Convolutional Networks (GCNs) have emerged as the state-of-the-art deep learning model for rep...
Convolutional networks are the current state of the art for image tasks. It has long been known that...
We investigate adaptive layer-wise graph convolution in deep GCN models. We propose AdaGPR to learn ...
Characterizing the underlying mechanism of graph topological evolution from a source graph to a targ...
Many neural networks for graphs are based on the graph convolution (GC) operator, proposed more than...
Increasing the depth of GCN, which is expected to permit more expressivity, is shown to incur perfor...
International audienceGraph Neural Networks (GNNs) have succeeded in various computer science applic...
In recent years, semi-supervised learning on graphs has gained importance in many fields and applica...
Graph representation learning resurges as a trending research subject owing to the widespread use of...
Many interesting problems in machine learning are being revisited with new deep learning tools. For ...
Graph neural networks (GNNs) have gradually become an important research branch in graph learning si...
Recently, several variants of graph convolution networks (GCNs), which have shown awesome performanc...
The last half-decade has seen a surge in deep learning research on irregular domains and efforts to ...
Effectively detecting anomalous nodes in attributed networks is crucial for the success of many real...
Effectively detecting anomalous nodes in attributed networks is crucial for the success of many real...
Graph Convolutional Networks (GCNs) have emerged as the state-of-the-art deep learning model for rep...
Convolutional networks are the current state of the art for image tasks. It has long been known that...
We investigate adaptive layer-wise graph convolution in deep GCN models. We propose AdaGPR to learn ...
Characterizing the underlying mechanism of graph topological evolution from a source graph to a targ...
Many neural networks for graphs are based on the graph convolution (GC) operator, proposed more than...
Increasing the depth of GCN, which is expected to permit more expressivity, is shown to incur perfor...
International audienceGraph Neural Networks (GNNs) have succeeded in various computer science applic...
In recent years, semi-supervised learning on graphs has gained importance in many fields and applica...