Many natural and technological applications generate time-ordered sequences of networks, defined over a fixed set of nodes; for example, time-stamped information about “who phoned who” or “who came into contact with who” arise naturally in studies of communication and the spread of disease. Concepts and algorithms for static networks do not immediately carry through to this dynamic setting. For example, suppose A and B interact in the morning, and then B and C interact in the afternoon. Information, or disease, may then pass from A to C, but not vice versa. This subtlety is lost if we simply summarize using the daily aggregate network given by the chain A-B-C. However, using a natural definition of a walk on an evolving network, we show tha...
Nodes can be ranked according to their relative importance within a network. Ranking algorithms base...
International audienceThe ability of a node to relay information in a network is often measured usin...
There is a growing interest in the study of graphs that evolve over time. Communication networks, pe...
Many natural and technological applications generate time ordered sequences of networks, defined over...
Many natural and technological applications generate time ordered sequences of networks, defined ove...
We propose a new algorithm for summarizing properties of large-scale time-evolving networks. This ty...
Many types of pairwise interactions take the form of a fixed set of nodes with edges that appear and...
Dynamic networks are those with a connectivity structure that changes over time. In this setting, th...
Increasing proliferation of mobile and online social networking platforms have given us unprecedente...
Time sliced networks describing human-human digital interactions are typically large and sparse. Thi...
Using real, time-dependent social interaction data, we look at correlations between some recently pr...
International audienceWe study network centrality measures that take into account the specific struc...
Time sliced networks describing human-human digital interactions are typically large and sparse. Thi...
A fundamental problem in the study of complex networks is to provide quantitative measures of correl...
In many settings it is appropriate to treat the evolution of pairwise interactions over continuous t...
Nodes can be ranked according to their relative importance within a network. Ranking algorithms base...
International audienceThe ability of a node to relay information in a network is often measured usin...
There is a growing interest in the study of graphs that evolve over time. Communication networks, pe...
Many natural and technological applications generate time ordered sequences of networks, defined over...
Many natural and technological applications generate time ordered sequences of networks, defined ove...
We propose a new algorithm for summarizing properties of large-scale time-evolving networks. This ty...
Many types of pairwise interactions take the form of a fixed set of nodes with edges that appear and...
Dynamic networks are those with a connectivity structure that changes over time. In this setting, th...
Increasing proliferation of mobile and online social networking platforms have given us unprecedente...
Time sliced networks describing human-human digital interactions are typically large and sparse. Thi...
Using real, time-dependent social interaction data, we look at correlations between some recently pr...
International audienceWe study network centrality measures that take into account the specific struc...
Time sliced networks describing human-human digital interactions are typically large and sparse. Thi...
A fundamental problem in the study of complex networks is to provide quantitative measures of correl...
In many settings it is appropriate to treat the evolution of pairwise interactions over continuous t...
Nodes can be ranked according to their relative importance within a network. Ranking algorithms base...
International audienceThe ability of a node to relay information in a network is often measured usin...
There is a growing interest in the study of graphs that evolve over time. Communication networks, pe...