Abstract A plethora of centrality measures or rankings have been proposed to account for the importance of the nodes of a network. In the seminal study of Boldi and Vigna (2014), the comparative evaluation of centrality measures was termed a difficult, arduous task. In networks with fast dynamics, such as the Twitter mention or retweet graphs, predicting emerging centrality is even more challenging. Our main result is a new, temporal walk based dynamic centrality measure that models temporal information propagation by considering the order of edge creation. Dynamic centrality measures have already started to emerge in publications; however, their empirical evaluation is limited. One of our main contributions is creating a quantitative exper...
International audienceThe topological structure of complex networks has fascinated researchers for s...
In complex networks, centrality metrics quantify the connectivity of nodes and identify the most imp...
International audienceWe show that prominent centrality measures in network analysis are all based o...
Structure of real networked systems, such as social relationship, can be modeled as temporal network...
Identifying the nodes that play significant roles in the epidemic spreading process has attracted e...
Measures of centrality of vertices in a network are usually defined solely on the basis of the netwo...
International audienceThe ability of a node to relay information in a network is often measured usin...
Increasing proliferation of mobile and online social networking platforms have given us unprecedente...
Abstract Background Different phenomena like the spread of a disease, social interactions or the bio...
Nodes can be ranked according to their relative importance within a network. Ranking algorithms base...
International audienceWe study network centrality measures that take into account the specific struc...
One of the most studied aspect of complex graphs is identifying the most influential nodes. There ar...
Temporal networks, i.e., networks in which the interactions among a set of elementary units change o...
The study of inuential members of human networks is an important research question in social network...
By analyzing evolving centrality roles using time dependent graphs, researchers may predict future c...
International audienceThe topological structure of complex networks has fascinated researchers for s...
In complex networks, centrality metrics quantify the connectivity of nodes and identify the most imp...
International audienceWe show that prominent centrality measures in network analysis are all based o...
Structure of real networked systems, such as social relationship, can be modeled as temporal network...
Identifying the nodes that play significant roles in the epidemic spreading process has attracted e...
Measures of centrality of vertices in a network are usually defined solely on the basis of the netwo...
International audienceThe ability of a node to relay information in a network is often measured usin...
Increasing proliferation of mobile and online social networking platforms have given us unprecedente...
Abstract Background Different phenomena like the spread of a disease, social interactions or the bio...
Nodes can be ranked according to their relative importance within a network. Ranking algorithms base...
International audienceWe study network centrality measures that take into account the specific struc...
One of the most studied aspect of complex graphs is identifying the most influential nodes. There ar...
Temporal networks, i.e., networks in which the interactions among a set of elementary units change o...
The study of inuential members of human networks is an important research question in social network...
By analyzing evolving centrality roles using time dependent graphs, researchers may predict future c...
International audienceThe topological structure of complex networks has fascinated researchers for s...
In complex networks, centrality metrics quantify the connectivity of nodes and identify the most imp...
International audienceWe show that prominent centrality measures in network analysis are all based o...