Autoregressive and moving average models for temporally dynamic networks treat time as a series of discrete steps which assumes even intervals between data measurements and can introduce bias if this assumption is not met. Using real and simulated data from the London Underground network, this paper illustrates the use of continuous time multilevel models to capture temporal trajectories of edge properties without the need for simultaneous measurements, along with two methods for producing interpretable summaries of model results. These including extracting ‘features’ of temporal patterns (e.g. maxima, time of maxima) which have utility in understanding the network properties of each connection and summarising whole-network properties as a ...
In economic and financial applications, there is often the need for analysing multivariate time seri...
While several models for analysing longitudinal network data have been proposed, their main differen...
International audienceModels at runtime have been initially investigated for adaptive systems. Model...
Many models for the analysis of spatio-temporal networks specify time as a series of discrete steps....
Given the growing number of available tools for modeling dynamic networks, the choice of a suitable ...
Given the growing number of available tools for modeling dynamic networks, the choice of a suitable ...
Given the growing number of available tools for modeling dynamic networks, the choice of a suitable ...
Given the growing number of available tools for modeling dynamic networks, the choice of a suitable ...
33 pages, 13 figures, 1 table33 pages, 13 figures, 1 table33 pages, 13 figures, 1 table33 pages, 13 ...
A spatiotemporal network is a spatial network (e.g., road network) along with the corresponding time...
Temporal data describe processes and phenomena that evolve over time. In many real-world applicatio...
BackgroundAccurately predicting mobile network traffic can help mobile network operators allocate re...
Network inference is becoming increasingly central in the analysis of complex phenomena as it allows...
Temporal networks are increasingly being used to model the interactions of complex systems. Most stu...
Link prediction is a well-studied technique for inferring the missing edges between two nodes in som...
In economic and financial applications, there is often the need for analysing multivariate time seri...
While several models for analysing longitudinal network data have been proposed, their main differen...
International audienceModels at runtime have been initially investigated for adaptive systems. Model...
Many models for the analysis of spatio-temporal networks specify time as a series of discrete steps....
Given the growing number of available tools for modeling dynamic networks, the choice of a suitable ...
Given the growing number of available tools for modeling dynamic networks, the choice of a suitable ...
Given the growing number of available tools for modeling dynamic networks, the choice of a suitable ...
Given the growing number of available tools for modeling dynamic networks, the choice of a suitable ...
33 pages, 13 figures, 1 table33 pages, 13 figures, 1 table33 pages, 13 figures, 1 table33 pages, 13 ...
A spatiotemporal network is a spatial network (e.g., road network) along with the corresponding time...
Temporal data describe processes and phenomena that evolve over time. In many real-world applicatio...
BackgroundAccurately predicting mobile network traffic can help mobile network operators allocate re...
Network inference is becoming increasingly central in the analysis of complex phenomena as it allows...
Temporal networks are increasingly being used to model the interactions of complex systems. Most stu...
Link prediction is a well-studied technique for inferring the missing edges between two nodes in som...
In economic and financial applications, there is often the need for analysing multivariate time seri...
While several models for analysing longitudinal network data have been proposed, their main differen...
International audienceModels at runtime have been initially investigated for adaptive systems. Model...