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Enabling Cross-Context Learning with Knowledge Graphs for Anomaly Detection in Communications Networks

 
dc.contributor.authorWeyns, Michael
dc.contributor.authorVanden Hautte Sander
dc.contributor.authorLejon, Annelies
dc.contributor.authorLedoux, Veerle
dc.contributor.authorBonte, Pieter
dc.contributor.authorDe Turck, Filip
dc.contributor.authorVan Hoecke, Sofie
dc.contributor.authorOngenae, Femke
dc.contributor.imecauthorWeyns, Michael
dc.contributor.imecauthorLejon, Annelies
dc.contributor.imecauthorBonte, Pieter
dc.contributor.imecauthorDe Turck, Filip
dc.contributor.imecauthorVan Hoecke, Sofie
dc.contributor.imecauthorOngenae, Femke
dc.contributor.orcidimecWeyns, Michael::0000-0002-6157-5997
dc.contributor.orcidimecBonte, Pieter::0000-0002-8931-8343
dc.contributor.orcidimecDe Turck, Filip::0000-0003-4824-1199
dc.contributor.orcidimecVan Hoecke, Sofie::0000-0002-7865-6793
dc.contributor.orcidimecOngenae, Femke::0000-0003-2529-5477
dc.date.accessioned2025-07-07T10:23:12Z
dc.date.available2025-07-05T03:58:23Z
dc.date.available2025-07-07T10:23:12Z
dc.date.issued2025
dc.description.abstractTraditional anomaly detection, using statistics and thresholds, requires detailed domain knowledge to manually define these parameter thresholds, as well as continuous human intervention to adapt the AD algorithms to changes in, among others, context and data characteristics. Machine learning-based anomaly detection tackles these issues by directly learning (ab)normal behaviour from the data without human intervention. This requires a significant amount of training data, such that techniques are often only trained once in a representative environment and then deployed in various contexts and configurations. As anomalies often correspond with different, context-dependent characteristics, a machine learning-based anomaly detection model trained for a single reference context is likely to yield false positives and negatives when deployed in a context that is too dissimilar. This creates a need for context-aware anomaly detection algorithms, which automatically adapt to changes in context, deployment environment & configurations, data stream parameters, and available resources. In this paper, we propose a methodology to address the need for context-awareness in anomaly detection by means of a novel paradigm called cross-context learning. Specifically, we enable cross-context learning for anomaly detection by combining knowledge graphs, to capture the context in a formal manner, and transfer learning, to enable the adaptation. When compared to transfer learning without context-awareness, we found performance increases of up to 6.658% on the evaluated datasets.
dc.description.wosFundingTextMichael Weyns (1SD8821N) and Pieter Bonte (1266521N) are funded respectively by a strategic base research grant and a postdoctoral fellowship, both awarded by the Fund for Scientific Research Flanders (FWO). Part of this research was funded by the imec.ICON RADIANCE (HBC.2017.0629), co-funded by VLAIO, imec, Skyline Communications, Barco and ML6
dc.identifier.doi10.1007/s10922-025-09953-w
dc.identifier.issn1064-7570
dc.identifier.urihttps://imec-publications.be/handle/20.500.12860/45869
dc.publisherSPRINGER
dc.source.beginpage1
dc.source.endpage32
dc.source.issue4
dc.source.journalJOURNAL OF NETWORK AND SYSTEMS MANAGEMENT
dc.source.numberofpages32
dc.source.volume33
dc.title

Enabling Cross-Context Learning with Knowledge Graphs for Anomaly Detection in Communications Networks

dc.typeJournal article
dspace.entity.typePublication
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