We introduce an approach for the interactive visual analysis of weighted, dynamic networks. These networks arise in areas such as computational neuroscience, sociology, and biology. Network analysis remains challenging due to complex time-varying network behavior. For example, edges disappear/reappear, communities grow/vanish, or overall network topology changes. Our technique, TimeSum, detects the important topological changes in graph data to abstract the dynamic network and visualize one summary representation for each temporal phase, a state. We define a network state as a graph with similar topology over a specific time interval. To enable a holistic comparison of networks, we use a difference network to depict edge and community chang...
A dynamic network is a network whose structure changes because of the emergence and disappearance of...
Given a set of temporal networks, from different domains and with different sizes, how can we compar...
Many developments have recently been made in mining dy-namic networks; however, effective visualizat...
Many temporal networks exhibit multiple system states, such as weekday and weekend patterns in socia...
Managing complex enterprise networks requires an under-standing at a finer granularity than traditio...
Complex systems and relational data are often abstracted as dynamical processes on networks. To unde...
We propose a visual analytics approach for the exploration and analysis of dynamic networks. We cons...
The ability to compare complex systems can provide new insight into the fundamental nature of the pr...
Networks are present in many fields such as finance, sociology, and transportation. Often these netw...
Abstract—The analysis of large dynamic networks poses a challenge in many fields, ranging from large...
<p>First, we map networks to feature vectors. Then we analysis these feature vectors with a hierarch...
Network data that changes over time can be very useful for studying a wide range of important phenom...
Extracting a proper dynamic network for modeling a time-dependent complex system is an important iss...
Temporal networks are widely used to map phenomena into complex systems in several research discipli...
Abstract—Large dynamic networks are targets of analysis in many fields. Tracking temporal changes at...
A dynamic network is a network whose structure changes because of the emergence and disappearance of...
Given a set of temporal networks, from different domains and with different sizes, how can we compar...
Many developments have recently been made in mining dy-namic networks; however, effective visualizat...
Many temporal networks exhibit multiple system states, such as weekday and weekend patterns in socia...
Managing complex enterprise networks requires an under-standing at a finer granularity than traditio...
Complex systems and relational data are often abstracted as dynamical processes on networks. To unde...
We propose a visual analytics approach for the exploration and analysis of dynamic networks. We cons...
The ability to compare complex systems can provide new insight into the fundamental nature of the pr...
Networks are present in many fields such as finance, sociology, and transportation. Often these netw...
Abstract—The analysis of large dynamic networks poses a challenge in many fields, ranging from large...
<p>First, we map networks to feature vectors. Then we analysis these feature vectors with a hierarch...
Network data that changes over time can be very useful for studying a wide range of important phenom...
Extracting a proper dynamic network for modeling a time-dependent complex system is an important iss...
Temporal networks are widely used to map phenomena into complex systems in several research discipli...
Abstract—Large dynamic networks are targets of analysis in many fields. Tracking temporal changes at...
A dynamic network is a network whose structure changes because of the emergence and disappearance of...
Given a set of temporal networks, from different domains and with different sizes, how can we compar...
Many developments have recently been made in mining dy-namic networks; however, effective visualizat...