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A Machine Learning Algorithm Based on Inverse Problems for Cyber Anomaly Detection

机译:一种基于逆问题的机器学习算法,用于网络异常检测

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摘要

With the rapid rate of technological advance, digital communications have become an integral part of our lives in e-commerce, healthcare, education, and government. As the cyber world has expanded and become more complex, it has also generated severe threats to cyber security. Adversarial attacks such as anomalies and misuses are hard to detect with conventional methods as these cyber activities look very similar to genuine ones.? There are many problems in anomaly and misuse detection of cybersecurity which can be considered as an inverse problem. In this paper, we have modeled anomaly detection system, Inverse Machine Learning Algorithm (IMLA), based on an inverse model approach with Riesz kernel and applying software system development concepts at each phase. For evaluation, the proposed approach IMLA have been compared with other state of the art supervised learning models. The experiments show the effectiveness of the proposed model IMLA.
机译:随着技术的飞速发展,数字通信已成为我们在电子商务,医疗保健,教育和政府领域生活中不可或缺的一部分。随着网络世界的扩展和变得越来越复杂,它也对网络安全产生了严重威胁。用常规方法很难检测到诸如异常和滥用之类的对抗攻击,因为这些网络活动看起来与真正的活动非常相似。在对网络安全进行异常和滥用检测方面存在许多问题,可以视为反问题。在本文中,我们基于带有Riesz内核的逆模型方法并在每个阶段应用软件系统开发概念,对异常检测系统逆机器学习算法(IMLA)进行了建模。为了进行评估,已将提议的方法IMLA与其他现有的监督学习模型进行了比较。实验证明了所提出模型IMLA的有效性。

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