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MITD-Net: Markov image-based threat detection network.

Malek Algabri1,2, Firdaus Alhrazi1, Cavazos Quero Luis3

  • 1Department of Computer Science, Faculty of Computer and Information Technology, Sana'a University, P.O. Box 33039, Sana'a , Yemen.

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This study introduces MITD-Net, a novel deep learning model for detecting malicious user behavior (MUB) in applications. MITD-Net offers a faster, more accurate solution for identifying insider threats, enhancing overall system security.

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Area of Science:

  • Computer Science
  • Cybersecurity
  • Artificial Intelligence

Background:

  • Malicious user behavior (MUB) poses a significant threat to organizational security, often leading to breaches.
  • Existing user activity detection technologies struggle to identify novel or unfamiliar security threats.
  • There is a critical need for advanced predictive technologies to counter sophisticated application-based malicious activities.

Purpose of the Study:

  • To introduce MITD-Net, a novel method for the effective and efficient prediction of malicious user behavior (MUB).
  • To enhance the detection of insider threats by improving upon existing user activity detection methods.
  • To develop a proactive system for identifying and mitigating potential security threats within organizations.

Main Methods:

  • Developed MITD-Net, a novel method utilizing a MobileNet convolutional neural network (CNN) architecture.
  • Extracted features from the CERT r4.2 dataset and converted them into a Markov image for MUB detection.
  • Leveraged deep neural networks for computational efficiency and adaptability in low-resource environments.

Main Results:

  • MITD-Net demonstrated superior speed and accuracy compared to existing methods for MUB prediction.
  • Experimental evaluations on CERT r4.2 datasets confirmed the model's effectiveness in detecting malicious user behavior.
  • The proposed approach achieved state-of-the-art or superior performance compared to previous studies.

Conclusions:

  • MITD-Net effectively addresses the challenge of predicting harmful user behavior, contributing to proactive threat identification.
  • The model enhances overall system security by enabling the early detection and mitigation of potential insider threats.
  • The study validates the significance of each component through ablation studies, confirming the robustness of MITD-Net.