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A Feature Compression Technique for Anomaly Detection Using Convolutional Neural Networks

机译:使用卷积神经网络的异常检测特征压缩技术

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Anomaly detection classification technology based on deep learning is one of the crucial technologies supporting network security. However, as the data increasing, this traditional model cannot guarantee that the false alarm rate is minimized while meeting the high detection rate. Additionally, distribution of imbalanced abnormal samples will lead to an increase in the error rate of the classification results. In this work, since CNN is effective in network intrusion classification, we embed a compressed feature layer in CNN (Convolutional Neural Networks). The purpose is to improve the efficiency of network intrusion detection. After our model was trained for 55 epochs and we set the learning rate of the model to 0.01, the detection rate reaches over 98%.
机译:基于深度学习的异常检测分类技术是支持网络安全的重要技术之一。但是,随着数据的增加,这种传统模型不能保证在满足高检测率的同时最小化了误报率。另外,不平衡异常样本的分布将导致分类结果的错误率的增加。在这项工作中,由于CNN在网络入侵分类中有效,因此我们在CNN(卷积神经网络)中嵌入了压缩特征层。目的是提高网络入侵检测的效率。在我们的型号培训55时期,我们将模型的学习率设置为0.01,检出率达到98%以上。

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