Abstract—This paper describes a methodology for finding and describing significant events in time evolving complex networks. We first group the nodes of the network in clusters, according to their similarity in terms of a set of local properties such as degree and clustering coefficient. We then monitor the behavior of these groups over time, looking for significant changes on the size of the groups. These events are notable since they show that the position of a number of nodes in the network has changed. We describe this evolution by extracting the correspondent transition patterns. We examined our methodology on three different real network datasets. Our experiments show that the discovered rules are significant and can describe the occu...
We propose a method for detecting large events based on the structure of temporal communication netw...
International audienceTo describe the dynamics taking place in networks that structurally change ove...
Abstract — Graphs are adept at describing relational data, hence their popularity in fields includin...
Event detection is a popular research problem, aiming to detect events from online data sources with...
International audienceDynamic Networks are a popular way of modeling and studying the behavior of ev...
Changes in the structure of observed social and complex networks can indicate a significant underlyi...
In this work, we focus on social interactions in communities in order to detect events. There are se...
Interactions among people or objects are often dynamic in nature and can be represented as a sequenc...
Within the large body of research in complex network analysis, an im-portant topic is the temporal e...
Abstract. Roughly speaking, clustering evolving networks aims at detecting structurally dense subgro...
The analysis of the temporal evolution of dynamic networks is a key challenge for understanding comp...
The analysis of the temporal evolution of dynamic networks is a key challenge for understanding comp...
The analysis of the temporal evolution of dynamic networks is a key challenge for understanding comp...
Here we lay out the details of how we generate signifi-cance clusters and alluvial diagrams for mapp...
Discovery of evolution chains Discovery of change patterns Change mining in networked data a b s t r...
We propose a method for detecting large events based on the structure of temporal communication netw...
International audienceTo describe the dynamics taking place in networks that structurally change ove...
Abstract — Graphs are adept at describing relational data, hence their popularity in fields includin...
Event detection is a popular research problem, aiming to detect events from online data sources with...
International audienceDynamic Networks are a popular way of modeling and studying the behavior of ev...
Changes in the structure of observed social and complex networks can indicate a significant underlyi...
In this work, we focus on social interactions in communities in order to detect events. There are se...
Interactions among people or objects are often dynamic in nature and can be represented as a sequenc...
Within the large body of research in complex network analysis, an im-portant topic is the temporal e...
Abstract. Roughly speaking, clustering evolving networks aims at detecting structurally dense subgro...
The analysis of the temporal evolution of dynamic networks is a key challenge for understanding comp...
The analysis of the temporal evolution of dynamic networks is a key challenge for understanding comp...
The analysis of the temporal evolution of dynamic networks is a key challenge for understanding comp...
Here we lay out the details of how we generate signifi-cance clusters and alluvial diagrams for mapp...
Discovery of evolution chains Discovery of change patterns Change mining in networked data a b s t r...
We propose a method for detecting large events based on the structure of temporal communication netw...
International audienceTo describe the dynamics taking place in networks that structurally change ove...
Abstract — Graphs are adept at describing relational data, hence their popularity in fields includin...