基于集合和深度学习的智能异常检测系统

B. K. Baniya, Thomas Rush
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引用次数: 0

摘要

互联网无处不在,在连接个人和方便获取各种基本服务方面发挥着举足轻重的作用。据国际电信联盟(ITU)报告,截至 2022 年,约有 53 亿人连接到互联网,这表明互联网的覆盖范围十分广泛,在我们的日常生活中不可或缺。如此广泛的覆盖面使通信、电子银行、电子商务、在线社会保障访问、医疗报告、教育、娱乐、天气信息、交通监控、在线调查等众多服务成为可能。然而,这一开放式平台也暴露了一些漏洞,恶意用户会积极利用虚拟领域的弱点,通过使用恶意软件获取凭证、经济利益或泄露重要信息。这种持续的威胁对保护网络空间中的敏感信息构成了严峻的挑战。为了应对这一挑战,我们提出使用基于集合和深度神经网络(DNN)的机器学习(ML)技术,在恶意意图数据包渗透或入侵系统和应用程序之前对其进行检测。攻击者采用各种策略躲避现有的安全系统,如防病毒或入侵检测系统,因此需要一种强大的防御机制。我们的方法包括实施一个集合,即各种分类器的集合,能够捕捉不同的攻击模式,并更好地概括高度相关的特征,从而与单一分类器相比,增强对各种攻击的防护。考虑到数据集的高度不平衡,集合分类器能有效解决这一问题,同时还采用了超采样技术,以尽量减少对多数类别的偏差。为了防止过拟合,我们在 DNN 中使用了随机森林(RF)和剔除技术。此外,与集合方法相比,我们还引入了 DNN 来评估其识别复杂攻击模式和变化的能力。我们利用分类准确率、精确度、召回率、Fl-score、混淆矩阵等各种指标来衡量我们提出的系统的性能,目的是超越当前最先进的入侵检测系统。
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Intelligent Anomaly Detection System Based on Ensemble and Deep Learning
The ubiquity of the Internet plays a pivotal role in connecting individuals and facilitating easy access to various essential services. As of 2022, the International Telecommunication Union (ITU) reports that approximately 5.3 billion people are connected to the internet, underscoring its widespread coverage and indispensability in our daily lives. This expansive coverage enables a myriad of services, including communication, e-banking, e-commerce, online social security access, medical reporting, education, entertainment, weather information, traffic monitoring, online surveys, and more. However, this open platform also exposes vulnerabilities to malicious users who actively seek to exploit weaknesses in the virtual domain, aiming to gain credentials, financial benefits, or reveal critical information through the use of malware. This constant threat poses a serious challenge in safeguarding sensitive information in cyberspace. To address this challenge, we propose the use of ensemble and deep neural network (DNN) based machine learning (ML) techniques to detect malicious intent packets before they can infiltrate or compromise systems and applications. Attackers employ various tactics to evade existing security systems, such as antivirus or intrusion detection systems, necessitating a robust defense mechanism. Our approach involves implementing an ensemble, a collection of diverse classifiers capable of capturing different attack patterns and better generalizing from highly relevant features, thus enhancing protection against a variety of attacks compared to a single classifier. Given the highly unbalanced dataset, the ensemble classifier effectively addresses this condition, and oversampling is also employed to minimize bias toward the majority class. To prevent overfitting, we utilize Random Forest (RF) and the dropout technique in the DNN. Furthermore, we introduce a DNN to assess its ability to recognize complex attack patterns and variations compared to the ensemble approach. Various metrics, such as classification accuracy, precision, recall, Fl-score, confusion matrix are utilized to measure the performance of our proposed system, with the aim of outperforming current state-of-the-art intrusion detection systems.
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