Title Deep learning-based authentication for insider threat detection in critical infrastructure /
Authors Budžys, Arnoldas ; Kurasova, Olga ; Medvedev, Viktor
DOI 10.1007/s10462-024-10893-1
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Is Part of Artificial intelligence review.. Dordrecht : Springer Nature B.V.. 2024, vol. 57, iss. 10, art. no. 272, p. [1-35].. ISSN 0269-2821. eISSN 1573-7462
Keywords [eng] critical infrastructure ; deep learning ; keystroke dynamics ; cybersecurity ; behavioral biometrics ; siamese neural network
Abstract [eng] In today’s cyber environment, threats such as data breaches, cyberattacks, and unauthorized access threaten national security, critical infrastructure, and financial stability. This research addresses the challenging task of protecting critical infrastructure from insider threats because of the high level of trust and access these individuals typically receive. Insiders may obtain a system administrator’s password through close observation or by deploying software to gather the information. To solve this issue, an innovative artificial intelligence-based methodology is proposed to identify a user by their password’s keystroke dynamics. This paper also introduces a new Gabor Filter Matrix Transformation method to transform numerical values into images by revealing the behavioral pattern of password typing. A siamese neural network (SNN) with the branches of convolutional neural networks is utilized for image comparison, aiming to detect unauthorized attempts to access critical infrastructure systems. The network analyzes the unique features of a user’s password timestamps transformed into images and compares them with previously submitted user passwords. The obtained results indicate that transforming the numerical values of keystroke dynamics into images and training an SNN leads to a lower equal error rate (EER) and higher user authentication accuracy than those previously reported in other studies. The methodology is validated on publicly available keystroke dynamics collections, the CMU and GREYC-NISLAB datasets, which collectively comprise over 30,000 password samples. It achieves the lowest EER value of 0.04545 compared to state-of-the-art methods for transforming non-image data into images. The paper concludes with a discussion of findings and potential future directions.
Published Dordrecht : Springer Nature B.V
Type Journal article
Language English
Publication date 2024
CC license CC license description