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Cloud-based Real-time Network Intrusion Detection Using Deep Learning

机译:基于云的实时网络入侵检测使用深度学习

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Deep learning has increased in popularity with researchers and developers investigating and using it for various use cases and applications. This research work focuses on realtime network intrusion detection by making use of deep learning. A cloud-based prototype system was developed to investigate the capability of deep learning based binomial classification and multinomial models to detect network intrusions in real-time. An evaluation study was carried out using the benchmark NSL-KDD dataset to compare deep learning models built using H2O and DeepLearning4J libraries, with other commonly used machine learning models such as Support Vector Machines, Random Forest, Logistic Regression and Naive Bayes. The results showed that the choice of the deep learning library is an important factor to consider for real-time applications. The H2O deep learning based binomial and multinomial models generally outperformed the other models, achieving over 99.5% accuracy using cross-validation on the NSL-KDD training dataset and over 83% accuracy on the test dataset.
机译:深入学习与研究人员和开发人员进行调查和使用它的各种用例和应用程序。本研究工作侧重于利用深度学习来侧重于实时网络入侵检测。开发了一种基于云的原型系统,以研究基于深度学习的二项式分类和多项式模型的实时检测网络入侵的能力。使用基准NSL-KDD DataSet进行评估研究,以比较使用H2O和Deeplearning4J库建造的深度学习模型,以及其他常用的机器学习模型,如支持向量机,随机林,逻辑回归和天真贝叶斯。结果表明,深层学习库的选择是实时应用的重要因素。基于H2O的深度学习的二项式和多项式模型一般优于其他模型,在NSL-KDD训练数据集上的交叉验证和测试数据集的准确性超过83%的准确度实现了超过99.5%的精度。

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