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Security Analysis in Cloud Environment

机译:云环境中的安全分析

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摘要

Cloud computing is a new environment similar to distributed systems and is limited to its use of networking. Therefore, security issues are prevalent and cannot be ignored. Intrusion detection systems (IDS) are used to detect malicious behavior in network communication and hosts in real time. An open-source IDS widely in use is Snort, powerful IDS that can be configured by writing simple rules to detect a wide variety of hostile or suspicious network traffic. But IDS alone cannot effectively analyze the security threats as they have high rates of false alerts. Several machine learning and neural network algorithms have been tested on available datasets, and it has been proved that these algorithms help reduce false alerts up to a large extent. In this paper, we propose a way to bridge the gap between intrusion detection system benchmarking and real-world attacks by making use of effective and efficient algorithms.
机译:云计算是一种类似于分布式系统的新环境,仅限于其使用网络。因此,安全问题是普遍的,不能忽略。入侵检测系统(IDS)用于实时检测网络通信和主机中的恶意行为。广泛使用的开源ID是Snort,功能强大的ID,可以通过编写简单的规则来检测各种敌对或可疑网络流量。但IDS独自无法有效地分析安全威胁,因为它们具有高误报率。在可用的数据集中测试了几种机器学习和神经网络算法,并且已经证明这些算法有助于在很大程度上减少误报。在本文中,我们通过利用有效和高效的算法提出了一种弥合入侵检测系统基准和实际攻击之间的差距的方法。

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