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Design and Evaluation of Unsupervised Machine Learning Models for Anomaly Detection in Streaming Cybersecurity Logs

Author

Listed:
  • Carmen Sánchez-Zas

    (ETSI Telecomunicación, Universidad Politécnica de Madrid (UPM), Avda. Complutense 30, 28040 Madrid, Spain)

  • Xavier Larriva-Novo

    (ETSI Telecomunicación, Universidad Politécnica de Madrid (UPM), Avda. Complutense 30, 28040 Madrid, Spain)

  • Víctor A. Villagrá

    (ETSI Telecomunicación, Universidad Politécnica de Madrid (UPM), Avda. Complutense 30, 28040 Madrid, Spain)

  • Mario Sanz Rodrigo

    (ETSI Telecomunicación, Universidad Politécnica de Madrid (UPM), Avda. Complutense 30, 28040 Madrid, Spain)

  • José Ignacio Moreno

    (ETSI Telecomunicación, Universidad Politécnica de Madrid (UPM), Avda. Complutense 30, 28040 Madrid, Spain)

Abstract

Companies, institutions or governments process large amounts of data for the development of their activities. This knowledge usually comes from devices that collect data from various sources. Processing them in real time is essential to ensure the flow of information about the current state of infrastructure, as this knowledge is the basis for management and decision making in the event of an attack or anomalous situations. Therefore, this article exposes three unsupervised machine learning models based on clustering techniques and threshold definitions to detect anomalies from heterogeneous streaming cybersecurity data sources. After evaluation, this paper presents a case of heterogeneous cybersecurity devices, comparing WSSSE, Silhouette and training time metrics for all models, where K-Means was defined as the optimal algorithm for anomaly detection in streaming data processing. The anomaly detection’s accuracy achieved is also significantly high. A comparison with other research studies is also performed, against which the proposed method proved its strong points.

Suggested Citation

  • Carmen Sánchez-Zas & Xavier Larriva-Novo & Víctor A. Villagrá & Mario Sanz Rodrigo & José Ignacio Moreno, 2022. "Design and Evaluation of Unsupervised Machine Learning Models for Anomaly Detection in Streaming Cybersecurity Logs," Mathematics, MDPI, vol. 10(21), pages 1-30, October.
  • Handle: RePEc:gam:jmathe:v:10:y:2022:i:21:p:4043-:d:958802
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