Detecting Port Scan Attempts with Comparative Analysis of Deep Learning and Support Vector Machine Algorithms

Dogukan Aksu, M. Ali Aydın
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引用次数: 57

Abstract

Compared to the past, developments in computer and communication technologies have provided extensive and advanced changes. The usage of new technologies provide great benefits to individuals, companies, and governments, however, it causes some problems against them. For example, the privacy of important information, security of stored data platforms, availability of knowledge etc. Depending on these problems, cyber terrorism is one of the most important issues in todays world. Cyber terror, which caused a lot of problems to individuals and institutions, has reached a level that could threaten public and country security by various groups such as criminal organizations, professional persons and cyber activists. Thus, Intrusion Detection Systems (IDS) have been developed to avoid cyber attacks. In this study, deep learning and support vector machine (SVM) algorithms were used to detect port scan attempts based on the new CICIDS2017 dataset and 97.80%, 69.79% accuracy rates were achieved respectively.
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用深度学习和支持向量机算法的比较分析检测端口扫描尝试
与过去相比,计算机和通信技术的发展带来了广泛而先进的变化。新技术的使用给个人、公司和政府带来了巨大的利益,然而,它也给他们带来了一些问题。例如,重要信息的隐私性、存储数据平台的安全性、知识的可用性等。基于这些问题,网络恐怖主义是当今世界最重要的问题之一。网络恐怖给个人和机构带来了许多问题,已经达到了可以威胁公共和国家安全的程度,犯罪组织、专业人士和网络活动家等各种团体。因此,入侵检测系统(IDS)被开发出来以避免网络攻击。在本研究中,基于新的CICIDS2017数据集,使用深度学习和支持向量机(SVM)算法检测端口扫描尝试,准确率分别达到97.80%和69.79%。
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