An Effective Preprocess for Deep Learning Based Intrusion Detection

Chia-Ju Lin, Ruey-Maw Chen
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引用次数: 1

Abstract

The data preprocess directly affects the classification results in various applications. In the field of intrusion detection, less research raised the problems or solutions of unequal metrics in data attributes. This study proposes an effective data preprocessing method for network packets with unequal metrics in packet attributes. A standard deviation standardization was first applied to standardize each attribute of KDDCUP'99 dataset, followed by quantizing it to the range of 0 to 255 interval for afterward use of the image. Meanwhile, the Zigzag arrangement coding and IDCT (Inverse Discrete Cosine Transform) were then used to convert the quantized data into images. Experimental results demonstrate that a more than 94% recall rate of the overall intrusion detection classifier can be yielded by the proposed preprocess method even without a complicated network model. Meanwhile, intrusion detection performance can be guaranteed by using small-size images of packet attributes.
基于深度学习的入侵检测有效预处理
在各种应用中,数据预处理直接影响分类结果。在入侵检测领域,很少有研究提出数据属性度量不相等的问题或解决方案。本文提出了一种有效的网络包属性不相等的数据预处理方法。首先对KDDCUP’99数据集的各个属性进行标准差标准化,然后将其量化到0 ~ 255的区间,供后续使用。同时,利用z字形排列编码和逆离散余弦变换(IDCT)将量化后的数据转换成图像。实验结果表明,即使不使用复杂的网络模型,该预处理方法也能使整个入侵检测分类器的召回率达到94%以上。同时,利用小尺寸的包属性图像可以保证入侵检测的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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