Recurrent segmentation meets block models in temporal networks
Chamalee Wickrama Arachchi, Nikolaj Tatti

TL;DR
This paper introduces a novel method for modeling recurrent activity in temporal networks using an extended stochastic block model with a segmentation approach, addressing the challenge of capturing cyclic behaviors.
Contribution
It extends the stochastic block model to temporal networks with recurrent activity by incorporating time segmentation and sharing parameters, and proposes an iterative algorithm for optimization.
Findings
The algorithm effectively discovers ground truth in synthetic datasets.
Recurrent behaviors are identifiable in real-world networks.
The method handles NP-hard segmentation by iterative optimization.
Abstract
A popular approach to model interactions is to represent them as a network with nodes being the agents and the interactions being the edges. Interactions are often timestamped, which leads to having timestamped edges. Many real-world temporal networks have a recurrent or possibly cyclic behaviour. For example, social network activity may be heightened during certain hours of day. In this paper, our main interest is to model recurrent activity in such temporal networks. As a starting point we use stochastic block model, a popular choice for modelling static networks, where nodes are split into groups. We extend this model to temporal networks by modelling the edges with a Poisson process. We make the parameters of the process dependent on time by segmenting the time line into segments. To enforce the recurring activity we require that only different set of parameters can…
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Taxonomy
TopicsComplex Network Analysis Techniques · Data Visualization and Analytics · Human Mobility and Location-Based Analysis
