Signed networks are frequently observed in real life with additional sign information associated with each edge, yet such information has been largely ignored in existing network models. This paper develops a unified embedding model for signed networks to disentangle the intertwined balance structure and anomaly effect, which can greatly facilitate the downstream analysis, including community detection, anomaly detection, and network inference. The proposed model captures both balance structure and anomaly effect through a low rank plus sparse matrix decomposition, which are jointly estimated via a regularized formulation. Its theoretical guarantees are established in terms of asymptotic consistency and finite-sample probability bounds for ...
Several network embedding models have been developed for unsigned networks. However, these models ba...
In social sciences, the signed directed networks are used to represent the mutual friendship and foe...
There is a longstanding belief that in social networks with simultaneous friendly and hostile intera...
Statistical network models are useful for understanding the underlying formation mechanism and chara...
Community detection is a common task in social network analysis (SNA) with applications in a variety...
Extracting community structure of complex network systems has many applications from engineering to ...
We present measures, models and link prediction algorithms based on the structural balance in signed...
There is a longstanding belief that in social networks with simultaneous friendly and hostile intera...
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...
Learning the low-dimensional representations of graphs (i.e., network embedding) plays a critical ro...
Signed networks are mathematical structures that encode positive and negative relations between enti...
Structural balance modeling for signed graph networks presents how to model the sources of conflicts...
| openaire: EC/H2020/654024/EU//SoBigDataSigned networks are graphs whose edges are labelled with ei...
Signed graphs are complex systems that represent trust relationships or preferences in various domai...
Several network embedding models have been developed for unsigned networks. However, these models ba...
In social sciences, the signed directed networks are used to represent the mutual friendship and foe...
There is a longstanding belief that in social networks with simultaneous friendly and hostile intera...
Statistical network models are useful for understanding the underlying formation mechanism and chara...
Community detection is a common task in social network analysis (SNA) with applications in a variety...
Extracting community structure of complex network systems has many applications from engineering to ...
We present measures, models and link prediction algorithms based on the structural balance in signed...
There is a longstanding belief that in social networks with simultaneous friendly and hostile intera...
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...
Learning the low-dimensional representations of graphs (i.e., network embedding) plays a critical ro...
Signed networks are mathematical structures that encode positive and negative relations between enti...
Structural balance modeling for signed graph networks presents how to model the sources of conflicts...
| openaire: EC/H2020/654024/EU//SoBigDataSigned networks are graphs whose edges are labelled with ei...
Signed graphs are complex systems that represent trust relationships or preferences in various domai...
Several network embedding models have been developed for unsigned networks. However, these models ba...
In social sciences, the signed directed networks are used to represent the mutual friendship and foe...
There is a longstanding belief that in social networks with simultaneous friendly and hostile intera...