In the study of dynamical processes on networks, there has been intense focus on network structure-i.e., the arrangement of edges and their associated weights-but the effects of the temporal patterns of edges remains poorly understood. In this chapter, we develop a mathematical framework for random walks on temporal networks using an approach that provides a compromise between abstract but unrealistic models and data-driven but non-mathematical approaches. To do this, we introduce a stochastic model for temporal networks in which we summarize the temporal and structural organization of a system using a matrix of waiting-time distributions. We show that random walks on stochastic temporal networks can be described exactly by an integro-diffe...
This thesis studies Temporal Graphs, also called Temporal Networks. More specifically, the project a...
Temporal graphs abstractly model real-life inherently dynamic networks. Given a graph G, a temporal ...
Simplified presentation of temporal network features, added figures to illustrate important concepts...
In the study of dynamical processes on networks, there has been intense focus on network structure-i...
We consider random walks on dynamical networks where edges appear and disappear during finite time i...
14 pages, 13 figuresMany natural and artificial networks evolve in time. Nodes and connections appea...
Network science investigates the architecture of complex systems to understand their functional and ...
The traditional way of studying temporal networks is to aggregate the dynamics of the edges to creat...
Real-world networks often exhibit complex temporal patterns that affect their dynamics and function....
International audienceThe interest in non-Markovian dynamics within the complex systems community ha...
Networks in almost any domain are dynamical entities. New nodes join the system, others leave it, an...
Abstract A heterogeneous continuous time random walk is an analytical formalism for studying and mod...
Nodes can be ranked according to their relative importance within a network. Ranking algorithms base...
Recent theoretical work on the modeling of network structure has focused primarily on networks that ...
The random walk process underlies the description of a large number of real-world phenomena. Here we...
This thesis studies Temporal Graphs, also called Temporal Networks. More specifically, the project a...
Temporal graphs abstractly model real-life inherently dynamic networks. Given a graph G, a temporal ...
Simplified presentation of temporal network features, added figures to illustrate important concepts...
In the study of dynamical processes on networks, there has been intense focus on network structure-i...
We consider random walks on dynamical networks where edges appear and disappear during finite time i...
14 pages, 13 figuresMany natural and artificial networks evolve in time. Nodes and connections appea...
Network science investigates the architecture of complex systems to understand their functional and ...
The traditional way of studying temporal networks is to aggregate the dynamics of the edges to creat...
Real-world networks often exhibit complex temporal patterns that affect their dynamics and function....
International audienceThe interest in non-Markovian dynamics within the complex systems community ha...
Networks in almost any domain are dynamical entities. New nodes join the system, others leave it, an...
Abstract A heterogeneous continuous time random walk is an analytical formalism for studying and mod...
Nodes can be ranked according to their relative importance within a network. Ranking algorithms base...
Recent theoretical work on the modeling of network structure has focused primarily on networks that ...
The random walk process underlies the description of a large number of real-world phenomena. Here we...
This thesis studies Temporal Graphs, also called Temporal Networks. More specifically, the project a...
Temporal graphs abstractly model real-life inherently dynamic networks. Given a graph G, a temporal ...
Simplified presentation of temporal network features, added figures to illustrate important concepts...