Collective inference is widely used to improve classification in network datasets. However, despite recent advances in deep learning and the successes of recurrent neural networks (RNNs), researchers have only just recently begun to study how to apply RNNs to heterogeneous graph and network datasets. There has been recent work on using RNNs for unsupervised learning in networks (e.g., graph clustering, node embedding) and for prediction (e.g., link prediction, graph classification), but there has been little work on using RNNs for node-based relational classification tasks. In this paper, we provide an end-to-end learning framework using RNNs for collective inference. Our main insight is to transform a node and its set of neighbors into an ...
Graph neural networks (GNNs) have emerged in recent years as a very powerful and popular modeling to...
Abstract With widely available large-scale network data, one hot topic is how to adopt traditional c...
International audienceWe address the task of node classification in heterogeneous networks, where th...
Collective inference is widely used to improve classification in network datasets. However, despite ...
Sensor networks, communication and financial networks, web and social networks are becoming increasi...
Relational learning deals with data that are characterized by relational structures. An important ta...
In predictive data mining tasks, we should account for autocorrelations of both the independent vari...
Numerous real-world applications produce networked data such as web data (hypertext documents connec...
Many real-world domains are relational, consisting of objects (e.g., users and papers) linked to eac...
Numerous real-world applications produce networked data such as web data (hypertext documents connec...
Many individuals on social networking sites provide traits about themselves, such as interests or de...
Many individuals on social networking sites provide traits about themselves, such as interests or de...
In predictive data mining tasks, we should account for auto-correlations of both the independent var...
Ensemble learning techniques combine predictions of multiple models to improve classification, while...
Labeling nodes in a network is an important problem that has seen a growing interest. A number of me...
Graph neural networks (GNNs) have emerged in recent years as a very powerful and popular modeling to...
Abstract With widely available large-scale network data, one hot topic is how to adopt traditional c...
International audienceWe address the task of node classification in heterogeneous networks, where th...
Collective inference is widely used to improve classification in network datasets. However, despite ...
Sensor networks, communication and financial networks, web and social networks are becoming increasi...
Relational learning deals with data that are characterized by relational structures. An important ta...
In predictive data mining tasks, we should account for autocorrelations of both the independent vari...
Numerous real-world applications produce networked data such as web data (hypertext documents connec...
Many real-world domains are relational, consisting of objects (e.g., users and papers) linked to eac...
Numerous real-world applications produce networked data such as web data (hypertext documents connec...
Many individuals on social networking sites provide traits about themselves, such as interests or de...
Many individuals on social networking sites provide traits about themselves, such as interests or de...
In predictive data mining tasks, we should account for auto-correlations of both the independent var...
Ensemble learning techniques combine predictions of multiple models to improve classification, while...
Labeling nodes in a network is an important problem that has seen a growing interest. A number of me...
Graph neural networks (GNNs) have emerged in recent years as a very powerful and popular modeling to...
Abstract With widely available large-scale network data, one hot topic is how to adopt traditional c...
International audienceWe address the task of node classification in heterogeneous networks, where th...