Detection of dynamic communities in temporal networks with sparse data

Abstract Temporal networks are a powerful tool for studying the dynamic nature of a wide range of real-world complex systems, including social, biological and physical systems. In particular, detection of dynamic communities within these networks can help identify important cohesive structures and f...

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Main Authors: Nataša Djurdjevac Conrad, Elisa Tonello, Johannes Zonker, Heike Siebert
Format: Article
Language:English
Published: SpringerOpen 2025-01-01
Series:Applied Network Science
Subjects:
Online Access:https://doi.org/10.1007/s41109-024-00687-3
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author Nataša Djurdjevac Conrad
Elisa Tonello
Johannes Zonker
Heike Siebert
author_facet Nataša Djurdjevac Conrad
Elisa Tonello
Johannes Zonker
Heike Siebert
author_sort Nataša Djurdjevac Conrad
collection DOAJ
description Abstract Temporal networks are a powerful tool for studying the dynamic nature of a wide range of real-world complex systems, including social, biological and physical systems. In particular, detection of dynamic communities within these networks can help identify important cohesive structures and fundamental mechanisms driving systems behaviour. However, when working with real-world systems, available data is often limited and sparse, due to missing data on systems entities, their evolution and interactions, as well as uncertainty regarding temporal resolution. This can hinder accurate representation of the system over time and result in incomplete or biased community dynamics. In this paper, we consider established methods for community detection and, using synthetic data experiments and real-world case studies, we evaluate the impact of data sparsity on the quality of identified dynamic communities. Our results give valuable insights on the evolution of systems with sparse data, which are less studied in existing literature, but are frequently encountered in real-world applications.
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institution Kabale University
issn 2364-8228
language English
publishDate 2025-01-01
publisher SpringerOpen
record_format Article
series Applied Network Science
spelling doaj-art-245353405f9f4444a35af3512a7cc4372025-01-12T12:11:54ZengSpringerOpenApplied Network Science2364-82282025-01-0110112910.1007/s41109-024-00687-3Detection of dynamic communities in temporal networks with sparse dataNataša Djurdjevac Conrad0Elisa Tonello1Johannes Zonker2Heike Siebert3Modeling and Simulation of Complex Processes, Zuse Institute BerlinDepartment of Mathematics and Computer Science, Freie Universität BerlinModeling and Simulation of Complex Processes, Zuse Institute BerlinDepartment of Mathematics, Kiel UniversityAbstract Temporal networks are a powerful tool for studying the dynamic nature of a wide range of real-world complex systems, including social, biological and physical systems. In particular, detection of dynamic communities within these networks can help identify important cohesive structures and fundamental mechanisms driving systems behaviour. However, when working with real-world systems, available data is often limited and sparse, due to missing data on systems entities, their evolution and interactions, as well as uncertainty regarding temporal resolution. This can hinder accurate representation of the system over time and result in incomplete or biased community dynamics. In this paper, we consider established methods for community detection and, using synthetic data experiments and real-world case studies, we evaluate the impact of data sparsity on the quality of identified dynamic communities. Our results give valuable insights on the evolution of systems with sparse data, which are less studied in existing literature, but are frequently encountered in real-world applications.https://doi.org/10.1007/s41109-024-00687-3Temporal networksSparse dataDynamic communitiesTemporal resolutionTemporal clustering
spellingShingle Nataša Djurdjevac Conrad
Elisa Tonello
Johannes Zonker
Heike Siebert
Detection of dynamic communities in temporal networks with sparse data
Applied Network Science
Temporal networks
Sparse data
Dynamic communities
Temporal resolution
Temporal clustering
title Detection of dynamic communities in temporal networks with sparse data
title_full Detection of dynamic communities in temporal networks with sparse data
title_fullStr Detection of dynamic communities in temporal networks with sparse data
title_full_unstemmed Detection of dynamic communities in temporal networks with sparse data
title_short Detection of dynamic communities in temporal networks with sparse data
title_sort detection of dynamic communities in temporal networks with sparse data
topic Temporal networks
Sparse data
Dynamic communities
Temporal resolution
Temporal clustering
url https://doi.org/10.1007/s41109-024-00687-3
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AT johanneszonker detectionofdynamiccommunitiesintemporalnetworkswithsparsedata
AT heikesiebert detectionofdynamiccommunitiesintemporalnetworkswithsparsedata