Randomized reference models for temporal networks
Laetitia Gauvin, Mathieu G\'enois, M\'arton Karsai, Mikko Kivel\"a,, Taro Takaguchi, Eugenio Valdano, Christian L. Vestergaard

TL;DR
This paper introduces a unified framework for classifying and understanding microcanonical randomized reference models (MRRMs) for temporal networks, enhancing their interpretability and application in analyzing dynamical processes.
Contribution
It proposes a taxonomy and naming convention for MRRMs, clarifies their effects on network features, and demonstrates sequential composition to create new models.
Findings
Classified MRRMs with a canonical naming system
Analyzed effects of MRRMs on network features
Showed how to combine MRRMs sequentially
Abstract
Many dynamical systems can be successfully analyzed by representing them as networks. Empirically measured networks and dynamic processes that take place in these situations show heterogeneous, non-Markovian, and intrinsically correlated topologies and dynamics. This makes their analysis particularly challenging. Randomized reference models (RRMs) have emerged as a general and versatile toolbox for studying such systems. Defined as random networks with given features constrained to match those of an input (empirical) network, they may, for example, be used to identify important features of empirical networks and their effects on dynamical processes unfolding in the network. RRMs are typically implemented as procedures that reshuffle an empirical network, making them very generally applicable. However, the effects of most shuffling procedures on network features remain poorly understood,…
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Taxonomy
TopicsMental Health Research Topics · Complex Network Analysis Techniques · Ecosystem dynamics and resilience
