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A novel technique for converting nominal attributes to numeric attributes for intrusion detection

机译:一种将名义属性转换为数字属性以进行入侵检测的新颖技术

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Intrusion Detection has been a popular area of research due to increase in number of attacks. Intrusion Detection is a classification problem, in which some of the attributes are nominal. Classification algorithms like Support Vector Machine, Extreme Learning Machine, Neural Network etc. are not capable of handling nominal features. This leads to the need of method for converting nominal features to numeric features. None of research articles published till date have evaluated the appropriate method of nominal to numeric conversion for intrusion detection problem. This work explores Target Methods, Dummy Methods and Influence Value Method for Intrusion Detection to convert nominal attributes to numeric attributes. This work also proposes a new method for nominal to numeric conversion, which performs better than existing methods. The results presented in this paper evaluated using NSL-KDD.
机译:由于攻击数量的增加,入侵检测已成为研究的热门领域。入侵检测是一个分类问题,其中一些属性是名义上的。支持向量机,极限学习机,神经网络等分类算法无法处理名义特征。这导致需要用于将名义特征转换为数字特征的方法。迄今为止,尚未有研究文章评估用于入侵检测问题的标称转换为数字的适当方法。这项工作探索了用于入侵检测的目标方法,虚拟方法和影响值方法,以将名义属性转换为数字属性。这项工作还提出了一种新的标称到数字转换的方法,该方法比现有方法执行得更好。本文介绍的结果使用NSL-KDD进行了评估。

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