Optimizing parameter search for community detection in time evolving networks of complex systems
ItaloIvo Lima Dias Pinto, Javier Omar Garcia, Kanika Bansal

TL;DR
This paper presents an objective method for selecting resolution parameters in community detection algorithms for time-evolving networks, improving the analysis of complex systems' dynamic structures.
Contribution
It introduces two approaches for automatic parameter determination based on self-organization principles, validated with benchmarks and real-world data.
Findings
Effective parameter selection enhances community detection accuracy.
Automated software facilitates application across diverse complex systems.
Method improves understanding of temporal dynamics in networks.
Abstract
Network representations have been effectively employed to analyze complex systems across various areas and applications, leading to the development of network science as a core tool to study systems with multiple components and complex interactions. There is a growing interest in understanding the temporal dynamics of complex networks to decode the underlying dynamic processes through the temporal changes in network structure. Community detection algorithms, which are specialized clustering algorithms, have been instrumental in studying these temporal changes. They work by grouping nodes into communities based on the structure and intensity of network connections over time aiming to maximize modularity of the network partition. However, the performance of these algorithms is highly influenced by the selection of resolution parameters of the modularity function used, which dictate the…
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