Open AccessJournal Article
Data mining based cyber-attack detection
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About: This article is published in System Simulation Technology. The article was published on 31 May 2017. and is currently open access. The article focuses on the topics: Cyber-attack & Big data.
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Detection and Identification of Cyber-Attacks in Cyber-Physical Systems Based on Machine Learning Methods
Zohre Nasiri Zarandi,Iman Sharifi +1 more
- 22 Dec 2020
TL;DR: In this paper, the authors used the structure of deep neural networks for the detection phase, which should inform the system of the existence of the attack in the initial moments of an attack.
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Multi-aspects AI-based Modeling and Adversarial Learning for Cybersecurity Intelligence and Robustness: A Comprehensive Overview
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- 27 Dec 2022
TL;DR: In this article , a comprehensive view on "Cybersecurity Intelligence and Robustness", emphasizing multi-aspects AI-based modeling and adversarial learning that could lead to addressing diverse issues in various cyber applications areas such as detecting malware or intrusions, zero-day attacks, phishing, data breach, cyberbullying and other cybercrimes.
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