Signed graphs are complex systems that represent trust relationships or preferences in various domains. Learning node representations in such graphs is crucial for many mining tasks. Although real-world signed relationships can be influenced by multiple latent factors, most existing methods often oversimplify the modeling of signed relationships by relying on social theories and treating them as simplistic factors. This limits their expressiveness and their ability to capture the diverse factors that shape these relationships. In this paper, we propose DINES, a novel method for learning disentangled node representations in signed directed graphs without social assumptions. We adopt a disentangled framework that separates each embedding into...
Graph drawing is the pictorial representation of graphs in a multi-dimensional space. Energy models ...
Social networks have become an indispensable part of modern life. Signed networks, a class of social...
In this thesis, we develop methods to efficiently and accurately characterize edges in complex netwo...
Given a signed directed network, how can we learn node representations which fully encode structural...
Signed networks are mathematical structures that encode positive and negative relations between enti...
International audienceMany real-world applications can be modeled as signed directed graphs wherein ...
Learning the low-dimensional representations of graphs (i.e., network embedding) plays a critical ro...
Positive and negative relations play an essential role in human behavior and shape the communities w...
International audienceLately, there has been an increased interest in signed net-works with applicat...
Different from a large body of research on social networks that almost exclusively focused on positi...
Statistical network models are useful for understanding the underlying formation mechanism and chara...
The paper can be viewed at: http://epubs.siam.org/doi/pdf/10.1137/1.9781611973440.77Lately, there ha...
Abstract. Signed graphs are graphs with signed edges. They are commonly used to represent positive a...
Signed networks are frequently observed in real life with additional sign information associated wit...
Social ties are formed as a result of interactions and individual preferences of the people in a soc...
Graph drawing is the pictorial representation of graphs in a multi-dimensional space. Energy models ...
Social networks have become an indispensable part of modern life. Signed networks, a class of social...
In this thesis, we develop methods to efficiently and accurately characterize edges in complex netwo...
Given a signed directed network, how can we learn node representations which fully encode structural...
Signed networks are mathematical structures that encode positive and negative relations between enti...
International audienceMany real-world applications can be modeled as signed directed graphs wherein ...
Learning the low-dimensional representations of graphs (i.e., network embedding) plays a critical ro...
Positive and negative relations play an essential role in human behavior and shape the communities w...
International audienceLately, there has been an increased interest in signed net-works with applicat...
Different from a large body of research on social networks that almost exclusively focused on positi...
Statistical network models are useful for understanding the underlying formation mechanism and chara...
The paper can be viewed at: http://epubs.siam.org/doi/pdf/10.1137/1.9781611973440.77Lately, there ha...
Abstract. Signed graphs are graphs with signed edges. They are commonly used to represent positive a...
Signed networks are frequently observed in real life with additional sign information associated wit...
Social ties are formed as a result of interactions and individual preferences of the people in a soc...
Graph drawing is the pictorial representation of graphs in a multi-dimensional space. Energy models ...
Social networks have become an indispensable part of modern life. Signed networks, a class of social...
In this thesis, we develop methods to efficiently and accurately characterize edges in complex netwo...