Nowadays, the network data that we need to deal with and make sense of are becoming increasingly large and complex. Small-world networks are a type of complex networks whose underling graphs have small diameter, shorter average path length between nodes, and a high degree of clustering structures and can be found in a wide range of scientific fields, including social networks, sociology, computer science, business intelligence, and biology. However, conventional visualization algorithms for small-work networks lead to a uniform clump of nodes or are restricted to a tree structure, making the network structure difficult to identify and analyze. This work provides a new visual analytical method to improve the situation. Different from previou...
Abstract—In this paper, we study the sensitivity of centrality metrics as a key metric of social net...
<p>First, we map networks to feature vectors. Then we analysis these feature vectors with a hierarch...
International audienceMining relational data often boils down to computing clusters, that is finding...
International audienceMany networks under study in Information Visualization are "small world" netwo...
Current graph drawing algorithms enable the creation of two dimensional node-link diagrams of huge g...
In the area of information visualization social or biological networks are visualized ina way so tha...
Centrality analysis determines the importance of vertices in a network based on their connectivity w...
Centrality analysis determines the importance of vertices in a network based on their connectivity w...
In this paper, we describe a new method for cluster recognition in complex networks. A typical real ...
Many networks exhibit small-world properties. The structure of a small-world network is characterize...
Small-world graphs have characteristically low average distance and thus cause force-directed method...
The centrality of an edge in a graph is proposed to be the degree of sensitivity of a graph distance...
The structure of many complex networks includes edge directionality and weights on top of their topo...
Network science has become increasingly popular over the last several years as people have realized ...
Small-world networks have characteristically low pairwise shortest-path distances, causing distance-...
Abstract—In this paper, we study the sensitivity of centrality metrics as a key metric of social net...
<p>First, we map networks to feature vectors. Then we analysis these feature vectors with a hierarch...
International audienceMining relational data often boils down to computing clusters, that is finding...
International audienceMany networks under study in Information Visualization are "small world" netwo...
Current graph drawing algorithms enable the creation of two dimensional node-link diagrams of huge g...
In the area of information visualization social or biological networks are visualized ina way so tha...
Centrality analysis determines the importance of vertices in a network based on their connectivity w...
Centrality analysis determines the importance of vertices in a network based on their connectivity w...
In this paper, we describe a new method for cluster recognition in complex networks. A typical real ...
Many networks exhibit small-world properties. The structure of a small-world network is characterize...
Small-world graphs have characteristically low average distance and thus cause force-directed method...
The centrality of an edge in a graph is proposed to be the degree of sensitivity of a graph distance...
The structure of many complex networks includes edge directionality and weights on top of their topo...
Network science has become increasingly popular over the last several years as people have realized ...
Small-world networks have characteristically low pairwise shortest-path distances, causing distance-...
Abstract—In this paper, we study the sensitivity of centrality metrics as a key metric of social net...
<p>First, we map networks to feature vectors. Then we analysis these feature vectors with a hierarch...
International audienceMining relational data often boils down to computing clusters, that is finding...