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A Hybrid System of Deep Learning and Learning Classifier System for Database Intrusion Detection

机译:用于数据库入侵检测的深度学习和学习分类器系统的混合系统

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Nowadays, as most of the companies and organizations rely on the database to safeguard sensitive data, it is required to guarantee the strong protection of the data. Intrusion detection system (IDS) can be an important component of the strong security framework, and the machine learning approach with adaptation capability has a great advantage for this system. In this paper, we propose a hybrid system of convolutional neural network (CNN) and learning classifier system (LCS) for IDS, called Convolutional Neural-Learning Classifier System (CN-LCS). CNN, one of the deep learning methods for image and pattern classification, classifies the queries by modeling normal behaviors of database. LCS, one of the adapted heuristic search algorithms based on genetic algorithm, discovers new rules to detect abnormal behaviors to supplement the CNN. Experiments with TPC-E benchmark database show that CN-LCS yields the best classification accuracy compared to other state-of-the-art machine learning algorithms. Additional analysis by t-SNE algorithm reveals the common patterns among highly misclassified queries.
机译:如今,由于大多数公司和组织都依靠数据库来保护敏感数据,因此需要保证对数据的有力保护。入侵检测系统(IDS)可能是强大的安全框架的重要组成部分,具有自适应能力的机器学习方法对该系统具有很大的优势。本文针对IDS提出了卷积神经网络(CNN)和学习分类器系统(LCS)的混合系统,称为卷积神经学习分类器系统(CN-LCS)。 CNN是用于图像和图案分类的深度学习方法之一,它通过对数据库的正常行为进行建模来对查询进行分类。 LCS是基于遗传算法的一种自适应启发式搜索算法,它发现新规则以检测异常行为以补充CNN。使用TPC-E基准数据库进行的实验表明,与其他最新的机器学习算法相比,CN-LCS具有最佳的分类精度。通过t-SNE算法进行的其他分析揭示了高度错误分类的查询之间的常见模式。

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