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Feature extraction using Deep Learning for Intrusion Detection System

机译:使用深度学习进行入侵检测系统的特征提取

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Deep Learning is an area of Machine Learning research, which can be used to manipulate large amount of information in an intelligent way by using the functionality of computational intelligence. A deep learning system is a fully trainable system beginning from raw input to the final output of recognized objects. Feature selection is an important aspect of deep learning which can be applied for dimensionality reduction or attribute reduction and making the information more explicit and usable. Deep learning can build various learning models which can abstract unknown information by selecting a subset of relevant features. This property of deep learning makes it useful in analysis of highly complex information one which is present in intrusive data or information flowing with in a web system or a network which needs to be analyzed to detect anomalies. Our approach combines the intelligent ability of Deep Learning to build a smart Intrusion detection system.
机译:深度学习是机器学习研究的一个领域,可通过使用计算智能功能来以智能方式操纵大量信息。深度学习系统是一个完全可训练的系统,从原始输入到已识别对象的最终输出开始。特征选择是深度学习的重要方面,可用于减少维数或减少属性,并使信息更加明确和可用。深度学习可以构建各种学习模型,这些模型可以通过选择相关特征的子集来提取未知信息。深度学习的这一特性使其可用于分析高度复杂的信息,该信息存在于需要分析以检测异常的Web系统或网络中的侵入性数据或信息流中。我们的方法结合了深度学习的智能功能来构建智能入侵检测系统。

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