Null Models for Community Detection in Spatially-Embedded, Temporal Networks
Marta Sarzynska, Elizabeth A. Leicht, Gerardo Chowell, Mason A. Porter

TL;DR
This paper introduces novel null models incorporating spatial information for community detection in networks, compares their effectiveness using synthetic and real-world epidemic data, and highlights the importance of null model choice.
Contribution
It develops a new radiation-based null model and evaluates its performance against existing models in spatially-embedded, temporal networks.
Findings
Radiation null model outperforms standard null models in synthetic benchmarks.
Spatial null models improve community detection accuracy in epidemic networks.
Time-dependent null models capture dynamic community structures more effectively.
Abstract
In the study of networks, it is often insightful to use algorithms to determine mesoscale features such as "community structure", in which densely connected sets of nodes constitute "communities" that have sparse connections to other communities. The most popular way of detecting communities algorithmically is to optimize the quality function known as modularity. When optimizing modularity, one compares the actual connections in a (static or time-dependent) network to the connections obtained from a random-graph ensemble that acts as a null model. The communities are then the sets of nodes that are connected to each other densely relative to what is expected from the null model. Clearly, the process of community detection depends fundamentally on the choice of null model, so it is important to develop and analyze novel null models that take into account appropriate features of the…
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