Node embeddings are a powerful tool in the analysis of networks; yet, their full potential for the important task of node clustering has not been fully exploited. In particular, most state-of-the-art methods generating node embeddings of signed networks focus on link sign prediction, and those that pertain to node clustering are usually not graph neural network (GNN) methods. Here, we introduce a novel probabilistic balanced normalized cut loss for training nodes in a GNN framework for semi-supervised signed network clustering, called SSSNET. The method is end-to-end in combining embedding generation and clustering without an intermediate step; it has node clustering as main focus, with an emphasis on polarization effects arising in network...
Network data appears in very diverse applications, like from biological, social, or sensor networks....
Different from a large body of research on social networks that almost exclusively focused on positi...
The recent interest in network analysis applications in personality psychology and psychopathology h...
Learning the low-dimensional representations of graphs (i.e., network embedding) plays a critical ro...
The study of social networks is a burgeoning research area. However, most existing work is on networ...
The study of social networks is a burgeoning research area. However, most existing work is on networ...
We introduce a principled method for the signed clustering problem, where the goal is to partition a...
Given a signed directed network, how can we learn node representations which fully encode structural...
Several network embedding models have been developed for unsigned networks. However, these models ba...
Motivated by social balance theory, we develop a theory of link classification in signed net-works u...
We present measures, models and link prediction algorithms based on the structural balance in signed...
Network embedding is an important method to learn low-dimensional vector representations of nodes in...
In social sciences, the signed directed networks are used to represent the mutual friendship and foe...
Social network analysis and mining get ever-increasingly important in recent years, which is mainly ...
The recent interest in network analysis applications in personality psychology and psychopathology h...
Network data appears in very diverse applications, like from biological, social, or sensor networks....
Different from a large body of research on social networks that almost exclusively focused on positi...
The recent interest in network analysis applications in personality psychology and psychopathology h...
Learning the low-dimensional representations of graphs (i.e., network embedding) plays a critical ro...
The study of social networks is a burgeoning research area. However, most existing work is on networ...
The study of social networks is a burgeoning research area. However, most existing work is on networ...
We introduce a principled method for the signed clustering problem, where the goal is to partition a...
Given a signed directed network, how can we learn node representations which fully encode structural...
Several network embedding models have been developed for unsigned networks. However, these models ba...
Motivated by social balance theory, we develop a theory of link classification in signed net-works u...
We present measures, models and link prediction algorithms based on the structural balance in signed...
Network embedding is an important method to learn low-dimensional vector representations of nodes in...
In social sciences, the signed directed networks are used to represent the mutual friendship and foe...
Social network analysis and mining get ever-increasingly important in recent years, which is mainly ...
The recent interest in network analysis applications in personality psychology and psychopathology h...
Network data appears in very diverse applications, like from biological, social, or sensor networks....
Different from a large body of research on social networks that almost exclusively focused on positi...
The recent interest in network analysis applications in personality psychology and psychopathology h...