Temporal contact networks are studied to understand dynamic spreading phenomena such as communicable diseases or information dissemination. To establish how spatiotemporal dynamics of nodes impact spreading potential in colocation contact networks, we propose "inducement-shuffling" null models which break one or more correlations between times, locations and nodes. By reconfiguring the time and/or location of each node's presence in the network, these models induce alternative sets of colocation events giving rise to contact networks with varying spreading potential. This enables second-order causal reasoning about how correlations in nodes' spatiotemporal preferences not only lead to a given contact network but ultimately influence the net...
Many natural and artificial networks evolve in time. Nodes and connections appear and disappear at v...
Data of physical contacts and face-to-face communications suggest temporally varying networks as the...
peer-reviewedBurstiness, the tendency of interaction events to be heterogeneously distributed in tim...
Temporal contact networks are studied to understand dynamic spreading phenomena such as communicable...
Temporal contact networks are studied to understand dynamic spreading phenomena such as communicable...
Temporal contact networks are studied to understand dynamic spreading phenomena such as communicable...
The static graph-based models of complex networks have enjoyed great success in describing various p...
Progress has been made in understanding how temporal network features affect the percentage of node...
We study SIS epidemic spreading processes unfolding on a recent generalisation of the activity-drive...
Many real-world complex systems including human interactions can be represented by temporal (or evol...
Human contact networks constitute a multitude of individuals and pairwise contacts among them. Howev...
Current approaches for modeling propagation in networks (e.g., of diseases, computer viruses, rumors...
Social closeness and popularity are key ingredients that shape the emergence and evolution of social...
We develop and analyze an agent-based model for the study of information propagation in dynamic cont...
The metapopulation framework is adopted in a wide array of disciplines to describe systems of well s...
Many natural and artificial networks evolve in time. Nodes and connections appear and disappear at v...
Data of physical contacts and face-to-face communications suggest temporally varying networks as the...
peer-reviewedBurstiness, the tendency of interaction events to be heterogeneously distributed in tim...
Temporal contact networks are studied to understand dynamic spreading phenomena such as communicable...
Temporal contact networks are studied to understand dynamic spreading phenomena such as communicable...
Temporal contact networks are studied to understand dynamic spreading phenomena such as communicable...
The static graph-based models of complex networks have enjoyed great success in describing various p...
Progress has been made in understanding how temporal network features affect the percentage of node...
We study SIS epidemic spreading processes unfolding on a recent generalisation of the activity-drive...
Many real-world complex systems including human interactions can be represented by temporal (or evol...
Human contact networks constitute a multitude of individuals and pairwise contacts among them. Howev...
Current approaches for modeling propagation in networks (e.g., of diseases, computer viruses, rumors...
Social closeness and popularity are key ingredients that shape the emergence and evolution of social...
We develop and analyze an agent-based model for the study of information propagation in dynamic cont...
The metapopulation framework is adopted in a wide array of disciplines to describe systems of well s...
Many natural and artificial networks evolve in time. Nodes and connections appear and disappear at v...
Data of physical contacts and face-to-face communications suggest temporally varying networks as the...
peer-reviewedBurstiness, the tendency of interaction events to be heterogeneously distributed in tim...