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Learning Intrusion Detection: Supervised or Unsupervised?

机译:学习入侵检测:有监督还是无监督?

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摘要

Application and development of specialized machine learning techniques is gaining increasing attention in the intrusion detection community. A variety of learning techniques proposed for different intrusion detection problems can be roughly classified into two broad categories: supervised (classification) and unsupervised (anomaly detection and clustering). In this contribution we develop an experimental framework for comparative analysis of both kinds of learning techniques. In our framework we cast unsupervised techniques into a special case of classification, for which training and model selection can be performed by means of ROC analysis. We then investigate both kinds of learning techniques with respect to their detection accuracy and ability to detect unknown attacks.
机译:专用机器学习技术的应用和开发在入侵检测领域越来越受到关注。针对不同的入侵检测问题提出的各种学习技术可以大致分为两大类:有监督的(分类)和无监督的(异常检测和聚类)。在这项贡献中,我们开发了一种用于对两种学习技术进行比较分析的实验框架。在我们的框架中,我们将无监督技术转换为分类的特殊情况,可以通过ROC分析进行训练和模型选择。然后,我们针对这两种学习技术的检测准确性和检测未知攻击的能力进行调查。

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