Spectral Graph Convolutional Networks (GCNs) are generalisations of standard convolutional for graph-structured data using the Laplacian operator. Recent work has shown that spectral GCNs have an intrinsic transferability. This work verifies this by studying the experimental transferability of spectral GCNs for a particular family of spectral graph networks using Chebyshev polynomials. This work introduces two contributions. First, numerical experiments exhibit good performances on two graph benchmarks, on tasks involving batches of graphs, namely graph regression, graph classification and node classification problems. Secondly we study a form of data augmentation through structural edge dropout showing performance improvements for GCNs. Th...
Graph convolutional networks are becoming indispensable for deep learning from graph-structured data...
The theme of this dissertation is machine learning on graph data. Graphs are generic models of signa...
Characterizing the underlying mechanism of graph topological evolution from a source graph to a targ...
This paper focuses on spectral filters on graphs, namely filters defined as elementwise multiplicati...
Graph convolutional networks (GCNs) are powerful tools for graph-structured data. However, they have...
The graph neural networks have developed by leaps and bounds in recent years due to the restriction ...
Designing spectral convolutional networks is a challenging problem in graph learning. ChebNet, one o...
Graph neural networks (GNNs) are successful at learning representations from most types of network d...
The rise of graph-structured data such as social networks, regulatory networks, citation graphs, and...
Many neural networks for graphs are based on the graph convolution (GC) operator, proposed more than...
Graph neural networks (GNNs) are composed of layers consisting of graph convolutions and pointwise n...
Abstract—In applications such as social, energy, transporta-tion, sensor, and neuronal networks, hig...
Graph-structured data appears in many modern applications like social networks, sensor networks, tra...
This paper proposes rational Chebyshev graph filters to approximate step graph spectral responses wi...
Many improvements on GNNs can be deemed as operations on the spectrum of the underlying graph matrix...
Graph convolutional networks are becoming indispensable for deep learning from graph-structured data...
The theme of this dissertation is machine learning on graph data. Graphs are generic models of signa...
Characterizing the underlying mechanism of graph topological evolution from a source graph to a targ...
This paper focuses on spectral filters on graphs, namely filters defined as elementwise multiplicati...
Graph convolutional networks (GCNs) are powerful tools for graph-structured data. However, they have...
The graph neural networks have developed by leaps and bounds in recent years due to the restriction ...
Designing spectral convolutional networks is a challenging problem in graph learning. ChebNet, one o...
Graph neural networks (GNNs) are successful at learning representations from most types of network d...
The rise of graph-structured data such as social networks, regulatory networks, citation graphs, and...
Many neural networks for graphs are based on the graph convolution (GC) operator, proposed more than...
Graph neural networks (GNNs) are composed of layers consisting of graph convolutions and pointwise n...
Abstract—In applications such as social, energy, transporta-tion, sensor, and neuronal networks, hig...
Graph-structured data appears in many modern applications like social networks, sensor networks, tra...
This paper proposes rational Chebyshev graph filters to approximate step graph spectral responses wi...
Many improvements on GNNs can be deemed as operations on the spectrum of the underlying graph matrix...
Graph convolutional networks are becoming indispensable for deep learning from graph-structured data...
The theme of this dissertation is machine learning on graph data. Graphs are generic models of signa...
Characterizing the underlying mechanism of graph topological evolution from a source graph to a targ...