Evaluation of Machine Learning based Network Attack Detection

Muhammad Awais Rajput, None Muhammad Umar, Adnan Ahmed, None Ali Raza Bhangwar, None Khadija Suhail Memon, None Misbah
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Abstract

The growth in the internet and communication technologies has driven tremendous developments in various application areas such as smart cities, cloud computing, internet-of-things, e-banking, e-commerce and e-government. However, with the advancements in networking infrastructure, hacking tools and methodologies have been much evolved thereby enabling hackers to attempt newer and more complicated cyber-attacks. Consequently, cyber-security has now emerged as a vital research area to address security concerns. Traditional security mechanisms such as firewalls and anti-viruses are not enough to protect networks and accurately detect intrusions. An Intrusion Detection System (IDS) provides an additional layer of security that prevents networks against possible intrusions through continuous surveillance of the network traffic. Despite the effectiveness of IDS and enormous research being conducted on the very topic, IDS still poses challenges to accurately detect intrusions, novel cyber-attacks and reducing false positive rates. Recently, Machine Learning (ML) and Deep Learning (DL) techniques have been exploited to overcome the inherent deficiencies of IDS. Existing research has demonstrated that ML and DL have great potential to detect intrusions and classify cyber-attacks in an efficient manner. Based on their inherent learning capabilities, ML and DL-based techniques can effectively detect patterns (features) from the network traffic and predict the behavior (normal or abnormal activity) based on these patterns. This research work first presents the concepts of IDS, followed by a comprehensive review of the recent ML and DL-based schemes. Later, a performance analysis of various ML algorithms is presented on a publicly available dataset to weigh their strengths and weaknesses in terms of accuracy and training time among others. We mainly evaluate the most commonly used supervised learning algorithms including Decision Trees (DT), Random Forest (RF), Gradient Booster (GB) and Neural Networks (NNs).
基于机器学习的网络攻击检测评估
互联网和通信技术的发展推动了智慧城市、云计算、物联网、电子银行、电子商务和电子政务等各个应用领域的巨大发展。然而,随着网络基础设施的进步,黑客工具和方法已经得到了很大的发展,从而使黑客能够尝试更新和更复杂的网络攻击。因此,网络安全已成为解决安全问题的一个重要研究领域。传统的防火墙、杀毒软件等安全机制已不足以保护网络、准确检测入侵。入侵检测系统(IDS)提供了一个额外的安全层,通过对网络流量的持续监视来防止网络遭受可能的入侵。尽管IDS的有效性和对该主题的大量研究,但IDS仍然面临着准确检测入侵,新型网络攻击和减少误报率的挑战。最近,机器学习(ML)和深度学习(DL)技术被用来克服入侵检测系统的固有缺陷。现有的研究表明,机器学习和深度学习在检测入侵和有效分类网络攻击方面具有很大的潜力。基于ML和dl的技术基于其固有的学习能力,可以有效地从网络流量中检测模式(特征),并根据这些模式预测行为(正常或异常活动)。这项研究工作首先提出了IDS的概念,然后对最近基于ML和dl的方案进行了全面的回顾。随后,在一个公开可用的数据集上对各种ML算法进行性能分析,以衡量它们在准确性和训练时间等方面的优缺点。我们主要评估了最常用的监督学习算法,包括决策树(DT)、随机森林(RF)、梯度增强器(GB)和神经网络(nn)。
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