Machine Learning Approaches in Detecting Network Attacks

Hasan Dalmaz, Erdal Erdal, H. Ünver
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引用次数: 0

Abstract

Developing technology brings many risk in terms of data security. In this regard, it is an important issue to detect attacks for network security. Intrusion detection systems developed due to technological developlments and increasing attack diversity have revealed the necessity of being more succesful in detecting attacks. Today, many studies are carried out on this subject. When the literature is examined, there are various studies with varying success rates in detecting network attacks using machine learning approaches. In this study, the NSL-KDD dataset was explained in detail, the positive aspects of the KDD Cup 99 dataset were specified, the classifier used, performance criteria and the success results obtained were evaluated. In addition, the developed GWO-MFO hybrid algorithm is mentioned and the result is shared.
检测网络攻击的机器学习方法
技术的发展带来了数据安全方面的诸多风险。因此,检测攻击对网络安全至关重要。随着技术的发展和攻击多样性的增加,入侵检测系统的发展表明需要更成功地检测攻击。今天,许多研究都在这个问题上进行。当检查文献时,有各种研究使用机器学习方法检测网络攻击的成功率不同。在本研究中,详细解释了NSL-KDD数据集,指定了KDD Cup 99数据集的积极方面,评估了使用的分类器,性能标准和获得的成功结果。此外,还介绍了所开发的GWO-MFO混合算法,并对其结果进行了共享。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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