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A Deep Learning Ensemble for Network Anomaly and Cyber-Attack Detection

机译:网络异常和网络攻击检测的深度学习合奏

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摘要

Currently, expert systems and applied machine learning algorithms are widely used to automate network intrusion detection. In critical infrastructure applications of communication technologies, the interaction among various industrial control systems and the Internet environment intrinsic to the IoT technology makes them susceptible to cyber-attacks. Given the existence of the enormous network traffic in critical Cyber-Physical Systems (CPSs), traditional methods of machine learning implemented in network anomaly detection are inefficient. Therefore, recently developed machine learning techniques, with the emphasis on deep learning, are finding their successful implementations in the detection and classification of anomalies at both the network and host levels. This paper presents an ensemble method that leverages deep models such as the Deep Neural Network (DNN) and Long Short-Term Memory (LSTM) and a meta-classifier (i.e., logistic regression) following the principle of stacked generalization. To enhance the capabilities of the proposed approach, the method utilizes a two-step process for the apprehension of network anomalies. In the first stage, data pre-processing, a Deep Sparse AutoEncoder (DSAE) is employed for the feature engineering problem. In the second phase, a stacking ensemble learning approach is utilized for classification. The efficiency of the method disclosed in this work is tested on heterogeneous datasets, including data gathered in the IoT environment, namely IoT-23, LITNET-2020, and NetML-2020. The results of the evaluation of the proposed approach are discussed. Statistical significance is tested and compared to the state-of-the-art approaches in network anomaly detection.
机译:目前,专家系统和应用机器学习算法广泛用于自动化网络入侵检测。在通信技术的关键基础设施应用中,各种工业控制系统之间的互动和IOT技术的内在内在的内在的互动使它们易于网络攻击。鉴于在关键网络物理系统(CPSS)中存在巨大的网络流量,在网络异常检测中实现的机器学习方法效率低下。因此,最近开发的机器学习技术,强调深入学习,在网络和主机级别的检测和分类中找到了他们的成功实现。本文介绍了一个合并方法,它利用堆叠概括原则之后的深度神经网络(DNN)和长短期存储器(LSTM)和长短期内存(LSTM)和元分类器(即逻辑回归)的深层模型。为了增强所提出的方法的能力,该方法利用了对网络异常的忧虑的两步过程。在第一阶段,数据预处理,用于特征工程问题的深稀疏自动沉积器(DSAE)。在第二阶段,利用堆叠集合学习方法进行分类。在该工作中公开的方法的效率在异构数据集上进行测试,包括在物联网环境中收集的数据,即IOT-23,Litnet-2020和Netml-2020。讨论了所提出的方法的评估结果。测试统计显着性,并与网络异常检测中的最先进方法进行比较。

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