• español
    • English
  • Login
  • English 
    • español
    • English

UniversidaddeCádiz

Área de Biblioteca, Archivo y Publicaciones
Communities and Collections
View Item 
  •   RODIN Home
  • Producción Científica
  • Artículos Científicos
  • View Item
  •   RODIN Home
  • Producción Científica
  • Artículos Científicos
  • View Item
JavaScript is disabled for your browser. Some features of this site may not work without it.

Improving the Reliability of Network Intrusion Detection Systems Through Dataset Integration

Thumbnail
Identificadores

URI: http://hdl.handle.net/10498/29682

DOI: 10.1109/TETC.2022.3178283

ISSN: 2168-6750

Files
2023_0141.pdf (1.703Mb)
Statistics
View statistics
Metrics and citations
 
Share
Export
Export reference to MendeleyRefworksEndNoteBibTexRIS
Metadata
Show full item record
Author/s
Magán Carrión, Roberto; Urda, Daniel; Díaz Cano, IgnacioAuthority UCA; Dorronsoro Díaz, BernabéAuthority UCA
Date
2022-06-02
Department
Ingeniería Informática
Source
IEEE Transactions on Emerging Topics in Computing. Vol. 10, nº 4, 1 October 2022, pp. 1717 - 1732
Abstract
This work presents Reliable-NIDS (R-NIDS), a novel methodology for Machine Learning (ML) based Network Intrusion Detection Systems (NIDSs) that allows ML models to work on integrated datasets, empowering the learning process with diverse information from different datasets. We also propose a new dataset, called UNK22. It is built from three of the most well-known network datasets (UGR'16, USNW-NB15 and NLS-KDD), each one gathered from its own network environment, with different features and classes, by using a data aggregation approach present in R-NIDS. Therefore, R-NIDS targets the design of more robust models that generalize better than traditional approaches. Following R-NIDS, in this work we propose to build two well-known ML models for reliable predictions thanks to the meaningful information integrated in UNK22. The results show how these models benefit from the proposed approach, being able to generalize better when using UNK22 in the training process, in comparison to individually using the datasets composing it. Furthermore, these results are carefully analyzed with statistical tools that provide high confidence on our conclusions. Finally, the proposed solution is feasible to be deployed in network production environments, not usually taken into account in the literature.
Subjects
data aggregation; data integration; machine learning; network security; NIDS; Robust network intrusion detection systems
Collections
  • Artículos Científicos [11595]
  • Articulos Científicos Ing. Inf. [299]
Atribución 4.0 Internacional
This work is under a Creative Commons License Atribución 4.0 Internacional

Browse

All of RODINCommunities and CollectionsBy Issue DateAuthorsTitlesSubjectsThis CollectionBy Issue DateAuthorsTitlesSubjects

My Account

LoginRegister

Statistics

View Usage Statistics

Información adicional

AboutDeposit in RODINPoliciesGuidelinesRightsLinksStatisticsNewsFrequently Asked Questions

RODIN is available through

OpenAIREOAIsterRecolectaHispanaEuropeanaBaseDARTOATDGoogle Academic

Related links

Sherpa/RomeoDulcineaROAROpenDOARCreative CommonsORCID

RODIN está gestionado por el Área de Biblioteca, Archivo y Publicaciones de la Universidad de Cádiz

Contact informationSuggestionsUser Support