Reviewing a New Optimized an ANFIS-Based Framework for Detecting Intrusion Detection System with Machine Learning Algorithms (Deep Learning Algorithm)

Khushbu Rai, Dr. Megha Kamble
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Abstract

Today's world is becoming more interconnected due to the current global internet, communication, or ways of doing business that have recently shifted to cloud computing platforms in order to increase their speed and productivity. But such can also be affected by cyber attacks on cloud infrastructure services to be executed on various cloud platforms, increasing the number of attacks on such systems to neutralize any harm caused by a cyber attack on such cloud-based infrastructure. Although network administrators utilize intrusion detection systems (IDS) to detect threats and anomalies, they frequently only make available post-attack ready to act in cyber warfare. If we could predict risky behavior, network administrators or security-enhancing software could intervene before harm was done. Incoming intrusion detection messages should be viewed as a sequence. The fundamental function of an intrusion detection system (IDS) is to distinguish between regular and abnormal network traffic. As a result, robust intrusion detection systems (IDS) using deep learning model are required to find such cyber risk in form of threats and anomalies on cloud based infrastructure.
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基于机器学习算法(深度学习算法)的入侵检测系统新优化框架综述
由于当前的全球互联网,通信或开展业务的方式最近转移到云计算平台,以提高其速度和生产力,当今世界正变得更加相互关联。但是,这也可能受到对在各种云平台上执行的云基础设施服务的网络攻击的影响,从而增加对此类系统的攻击次数,以抵消对此类基于云的基础设施的网络攻击所造成的任何损害。尽管网络管理员利用入侵检测系统(IDS)来检测威胁和异常,但它们通常只在攻击后准备好在网络战中发挥作用。如果我们能够预测危险行为,网络管理员或安全增强软件就可以在伤害发生之前进行干预。应该将传入的入侵检测消息视为一个序列。入侵检测系统(IDS)的基本功能是区分正常和异常的网络流量。因此,需要使用深度学习模型的强大入侵检测系统(IDS)来发现基于云基础设施的威胁和异常形式的网络风险。
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