基于监督机器学习的计算机系统入侵检测模型

Santhosh Kumar Chenniappanadar, Gnanamurthy Sundharamurthy, Vinoth Kumar Sakthivelu, V. K. Kaliappan
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引用次数: 2

摘要

在我们这个数字时代,互联网的使用已经成为几乎所有行业通信的必要条件。为了保护网络,一个有效的入侵检测系统(IDS)是至关重要的。入侵检测系统是一种使用各种机器学习算法检测网络入侵的软件应用程序。由于知识是直接从数据中获取的,因此机器学习方法减少了专家的功能。它利用网络中信息包旋转的所有特征进行入侵检测,这一事实被各种检测入侵的方法(如统计模型、安全系统方法等)所削弱。机器学习已经成为网络安全的一项根本性创新。本文提出了困扰企业的两种主要攻击类型,即拒绝服务(DOS)和分布式拒绝服务(DDOS)攻击。对物联网(IOT)最具灾难性的攻击之一是拒绝服务攻击。本研究提出了两种不同的机器学习技术,主要是监督学习。为了实现这一目标,本文代表了一种回归算法,该算法通常用于数据科学和机器学习中预测未来。一种创新的检测方法是通过挖掘特定应用程序的日志来使用机器学习算法。网络安全是一种让他们的客户安心的方式,他们需要知道他们已经保护了他们的信息和金钱。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Supervised Machine Learning Based Intrusion Detection Model for Detecting Cyber-Attacks Against Computer System
Internet usage has become essential for correspondence in almost every calling in our digital age. To protect a network, an effective intrusion detection system (IDS) is vital. Intrusion Detection System is a software application to detect network intrusion using various machine learning algorithms. The function of the expert has been lessened by machine learning approaches since knowledge is taken directly from the data. The fact that it makes use of all the features of an information packet spinning in the network for intrusion detection is weakened by the employment of various methods for detecting intrusions, such as statistical models, safe system approaches, etc. Machine learning has become a fundamental innovation for cyber security. Two of the key types of attacks that plague businesses, as proposed in this paper, are Denial of Service (DOS) and Distributed Denial of Service (DDOS) attacks. One of the most disastrous attacks on the Internet of Things (IOT) is a denial of service.  Two diverse Machine Learning techniques are proposed in this research work, mainly Supervised learning. To achieve this goal, the paper represents a regression algorithm, which is usually used in data science and machine learning to forecast the future. An innovative approach to detecting is by using the Machine Learning algorithm by mining application-specific logs. Cyber security is a way of providing their customers the peace of mind they need knowing that they have secured their information and money.
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