Recently, graph neural networks for semi-supervised classification have been widely studied. However, existing methods only use the information of limited neighbors and do not deal with the inter-class connections in graphs. In this paper, we propose Adaptive aggregation with Class-Attentive Diffusion (AdaCAD), a new aggregation scheme that adaptively aggregates nodes probably of the same class among K-hop neighbors. To this end, we first propose a novel stochastic process, called Class-Attentive Diffusion (CAD), that strengthens attention to intra-class nodes and attenuates attention to inter-class nodes. In contrast to the existing diffusion methods with a transition matrix determined solely by the graph structure, CAD considers both the ...
In this paper we address the issue of enhancing salient object detection through diffusion-based tec...
Diffusion, a fundamental internal mechanism emerging in many physical processes, describes the inter...
We present GraphMix, a regularization method for Graph Neural Network based semi-supervised object c...
National audienceClassification through Graph-based semi-supervised learning algorithms can be viewe...
In statistical learning over large data-sets, labeling all points is expensive and time-consuming. S...
Diffusion-based semi-supervised learning on graphs consists of diffusing labeled information of a fe...
Semi-supervised learning is one of the important topics in machine learning, concerning with pattern...
Semisupervised learning is a machine learning approach that is able to employ both labeled and unlab...
This work examines the problem of learning the topology of a network from the samples of a diffusion...
Graph diffusion is the process of spreading information from one or few nodes to the rest of the gra...
Abstract We propose a new classifier, named electric network classifiers, for semi-supervised learni...
Graph Convolutional Networks (GCN) is a pioneering model for graph-based semi-supervised learning. H...
In the thesis, we propose machine learning algorithms utilising diffusion processes to learn the pai...
Many real-world domains are relational, consisting of objects (e.g., users and papers) linked to eac...
In this paper we address the issue of enhancing salient object detection through diffusion-based tec...
Diffusion, a fundamental internal mechanism emerging in many physical processes, describes the inter...
We present GraphMix, a regularization method for Graph Neural Network based semi-supervised object c...
National audienceClassification through Graph-based semi-supervised learning algorithms can be viewe...
In statistical learning over large data-sets, labeling all points is expensive and time-consuming. S...
Diffusion-based semi-supervised learning on graphs consists of diffusing labeled information of a fe...
Semi-supervised learning is one of the important topics in machine learning, concerning with pattern...
Semisupervised learning is a machine learning approach that is able to employ both labeled and unlab...
This work examines the problem of learning the topology of a network from the samples of a diffusion...
Graph diffusion is the process of spreading information from one or few nodes to the rest of the gra...
Abstract We propose a new classifier, named electric network classifiers, for semi-supervised learni...
Graph Convolutional Networks (GCN) is a pioneering model for graph-based semi-supervised learning. H...
In the thesis, we propose machine learning algorithms utilising diffusion processes to learn the pai...
Many real-world domains are relational, consisting of objects (e.g., users and papers) linked to eac...
In this paper we address the issue of enhancing salient object detection through diffusion-based tec...
Diffusion, a fundamental internal mechanism emerging in many physical processes, describes the inter...
We present GraphMix, a regularization method for Graph Neural Network based semi-supervised object c...