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Learning Classifier Systems for Adaptive Learning of Intrusion Detection System

机译:学习分类器系统,用于自适应学习入侵检测系统

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Relational databases contain information that must be protected such as personal information, the problem of intrusion detection of relational database is considered important. Also, the pattern of attacks evolves and it is difficult to grasp by rule-based method or general machine learning, so adaptive learning is needed. Learning classifier systems are system that combines supervised learning, reinforcement learning and evolutionary computation. It creates and updates classifiers according to data input. Learning classifier systems can learn adaptive because they generate and evaluate classifiers in real time. In this paper, we apply accuracy based learning classifier systems to relational database and confirm that adaptive learning is possible. Also, we confirmed their practical usability that they close to the best accuracy, though were not the best.
机译:关系数据库包含必须受保护的信息,例如个人信息,相关数据库的入侵检测问题被认为是重要的。此外,攻击模式演变而来,难以通过基于规则的方法或一般机器学习掌握,因此需要自适应学习。学习分类器系统是组合监督学习,强化学习和进化计算的系统。它根据数据输入创建和更新分类器。学习分类器系统可以学习自适应,因为它们实时生成和评估分类器。在本文中,我们将基于精确的学习分类器系统应用于关系数据库,并确认可以进行自适应学习。此外,我们确认了他们接近最佳准确性的实际可用性,但不是最好的。

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