Étude comparative des approches de détection de communautés

dc.contributor.authorBendifallah Aymen. .
dc.contributor.authorZouaoui Youcef Bahaa Edin
dc.date.accessioned2025-11-11T08:35:13Z
dc.date.issued2025
dc.description.abstractThe analysis of complex networks has vast and varied applications, ranging from social networks to biological and technological systems. Community detection is a key task in this analysis, as it allows the division of a network into subgroups of nodes that are densely connected to each other but weakly connected to the rest of the network. This study focuses on unsupervised algorithms for community detection, which are capable of identifying these structures without requiring labeled data. These methods rely on various approaches such as the optimization of modularity, spectral methods, and dynamic processes. The thesis provides a detailed analysis of unsupervised techniques, highlighting their advantages and challenges, particularly regarding scalability and robustness in large networks. The study also presents a comparative evaluation of these algorithms across several types of complex networks to assess their effectiveness and reliability in detecting communities. Finally, potential improvements to existing algorithms are discussed, with a focus on their application in modern, large-scale networks
dc.identifier.issnMM/907
dc.identifier.urihttps://dspace.univ-bba.dz/handle/123456789/1007
dc.language.isofr
dc.publisheruniversity of bordj bou arreridj
dc.subject: anomaly detection
dc.subjectnetwork security
dc.subjectsupervised learning
dc.subjectunsupervised learning
dc.subjectmachine learning
dc.subjectLouvain algorithm
dc.subjectWalktrap algorithm
dc.subjectInfomap algorithm
dc.subjectLeiden algo- rithm
dc.subjectClauset-Newman-Moore algorithm
dc.subjectLabel Propagation
dc.subjectclustering
dc.subjectPython
dc.subjectdatasets
dc.titleÉtude comparative des approches de détection de communautés
dc.typeThesis

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