When dealing with large graphs, such as those that arise in the context of online social networks, a subset of nodes may be labeled. These labels can indicate demographic values, interest, beliefs or other characteristics of the nodes (users). A core problem is to use this information to extend the labeling so that all nodes are assigned a label (or labels). In this chapter, we survey techniques that have been proposed for this problem. We consider two broad categories: methods based on iterative application of traditional classifiers using graph information as features, and methods which propagate the existing labels via random walks. We adopt a common perspective on these methods to highlight the similarities between different approaches ...
We study the problem of semi-supervised, multi-label user classification of networked data in the on...
In the last decade, online social networks have become an integral part of life. These networks play...
Motivated by a problem of targeted advertising in social networks, we introduce a new model of onlin...
International audienceWe address the task of node classification in heterogeneous networks, where th...
Abstract. We consider the problem of labeling actors in social networks where the labels correspond ...
We address the problem of multi-label classification of relational graphs by proposing a framework t...
We address the problem of multi-label classification in heterogeneous graphs, where nodes belong to ...
We tackle the problem of inferring node labels in a partially labeled graph where each node in the g...
We introduce a multi-label classification model and algorithm for labeling heterogeneous networks, w...
Abstract With widely available large-scale network data, one hot topic is how to adopt traditional c...
Nodes of a social graph often represent entities with specific labels, denoting properties such as a...
We introduce a multi-label classification model and algorithm for labeling heterogeneous networks, ...
The task of node classification concerns a network where nodes are associated with labels, but label...
AbstractMotivated by a problem of targeted advertising in social networks, we introduce a new model ...
Thesis (Master's)--University of Washington, 2016-12Bipartite graphs are graphs whose vertices ...
We study the problem of semi-supervised, multi-label user classification of networked data in the on...
In the last decade, online social networks have become an integral part of life. These networks play...
Motivated by a problem of targeted advertising in social networks, we introduce a new model of onlin...
International audienceWe address the task of node classification in heterogeneous networks, where th...
Abstract. We consider the problem of labeling actors in social networks where the labels correspond ...
We address the problem of multi-label classification of relational graphs by proposing a framework t...
We address the problem of multi-label classification in heterogeneous graphs, where nodes belong to ...
We tackle the problem of inferring node labels in a partially labeled graph where each node in the g...
We introduce a multi-label classification model and algorithm for labeling heterogeneous networks, w...
Abstract With widely available large-scale network data, one hot topic is how to adopt traditional c...
Nodes of a social graph often represent entities with specific labels, denoting properties such as a...
We introduce a multi-label classification model and algorithm for labeling heterogeneous networks, ...
The task of node classification concerns a network where nodes are associated with labels, but label...
AbstractMotivated by a problem of targeted advertising in social networks, we introduce a new model ...
Thesis (Master's)--University of Washington, 2016-12Bipartite graphs are graphs whose vertices ...
We study the problem of semi-supervised, multi-label user classification of networked data in the on...
In the last decade, online social networks have become an integral part of life. These networks play...
Motivated by a problem of targeted advertising in social networks, we introduce a new model of onlin...