Automatic Method to Predict and Classify Cyber Hacking Breaches using Machine Learning

Vishnu Shankara M A, Dr. H. Jayamangala
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Abstract

The fast propagation of computer networks has changed the viewpoint of network security. Easy accessibility conditions cause computer networks to be susceptible against several threats from hackers. Threats to networks are numerous and potentially devastating. Up to the moment, researchers have developed Malware Detection Systems (MDS) capable of detecting attacks in several available environments. A boundlessness of methods for misuse detection as well as anomaly detection has been applied. Many of the technologies proposed are complementary to each other, since for different kinds of environments some approaches perform better than others. This project presents a new Malware detection system that is then used to survey and classify them. The taxonomy consists of the detection principle, and second of certain operational aspects of the Malware detection system. In our project we have used algorithms like Random Forest (RF) as existing and Support Vector Machine (SVM) as proposed systems. From the results it is proved that the proposed SVM will work better than existing RF. All are measured in terms of accuracy
利用机器学习预测和分类网络黑客入侵的自动方法
计算机网络的快速传播改变了人们对网络安全的看法。便捷的访问条件使计算机网络容易受到来自黑客的多种威胁。网络面临的威胁不计其数,而且具有潜在的破坏性。迄今为止,研究人员已经开发出能够在多种可用环境中检测攻击的恶意软件检测系统(MDS)。滥用检测和异常检测的方法层出不穷。提出的许多技术是互补的,因为对于不同类型的环境,有些方法比其他方法性能更好。本项目提出了一种新的恶意软件检测系统,然后用来对它们进行调查和分类。分类包括检测原理和恶意软件检测系统的某些操作方面。在我们的项目中,我们使用了随机森林(RF)等现有算法和支持向量机(SVM)等拟议系统。结果证明,建议的 SVM 比现有的 RF 效果更好。所有算法都以准确率为衡量标准
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