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Malware traffic classification using principal component analysis and artificial neural network for extreme surveillance

机译:使用主成分分析和人工神经网络进行恶意软件流量分类以进行极端监控

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摘要

Code-driven systems have extent to more than half of the world's populations in ambient data and connectivity, offering formerly unimagined opportunities and unexpected threats. Evolutions in Artificial Intelligence (AI) are seen increasing day by day especially in industrial builds. The unconventional technique of AI in cyber-attacks seems to be quite daunting. The idea of a machine growing its own knowledge through self-learning becomes sophisticated to attack things is a fretful problem to the cyber world. Most of the time, these AI enabled cyber-attacks are performed using advanced malwares which incorporates advanced evasion techniques to evade security perimeters. Traditional cyber security methods fail to cope with these attacks. In order to address these issues, robust traffic classification system using Principal Component Analysis (PCA) and Artificial Neural Network (ANN) is proposed for providing extreme surveillance. Further, these proposed method aims to expose various AI based cyber-attacks with their present-day impact, and their fortune in the future. Simulation is carried out using a self-developed autonomous agent which learns by itself. Experimental results confirm that the proposed schemes are efficient to classify the attack traffic with 99% of accuracy when compared to the state of the art methods.
机译:代码驱动的系统在环境数据和连接性方面已遍及全球一半以上的人口,提供了以前无法想象的机会和意外威胁。人工智能(AI)的发展日新月异,特别是在工业建筑中。网络攻击中非常规的AI技术似乎令人生畏。通过自我学习来增加自己的知识的机器的想法变得复杂,可以攻击事物对网络世界来说是一个烦恼的问题。大多数时候,这些启用了AI的网络攻击都是使用高级恶意软件执行的,这些恶意软件结合了先进的逃避技术来逃避安全范围。传统的网络安全方法无法应对这些攻击。为了解决这些问题,建议使用主成分分析(PCA)和人工神经网络(ANN)的鲁棒流量分类系统来提供极端监视。此外,这些提议的方法旨在通过其当前影响以及未来的命运来揭露各种基于AI的网络攻击。使用自行开发的自主开发的智能体进行仿真。实验结果证实,与现有技术方法相比,该方案可有效地以99%的准确度对攻击流量进行分类。

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