基于CPU和GPU的相对熵入侵检测比较

Q. Qian, Hongyi Che, Rui Zhang, Mingjun Xin
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引用次数: 4

摘要

在分析由一组不同样本组成的对象的行为模式时,基于特征在一组样本中的概率分布来分析其模式是一种有效的方法。与传统的关注每个样本的特征模式然后建立一个模型来区分不同样本的方法不同,基于概率分布的模式识别可以通过分析样本的概率分布模型来得出一组样本的特征,然后将这组样本与另一组样本区分开来。通过这种方式,不仅可以节省大量的时间和资源,而且可以更有代表性地展示一组样本的群体特征。本文通过分析概率分布、相对熵和归一化相对熵等不同的准则,利用基于概率分布的模式识别的这一特殊优势来检测网络异常。此外,本文还分析了基于CPU的串行算法、基于GPU的并行算法和基于GPU的MapReduce并行算法的不同算法实现之间的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Comparison of the Relative Entropy for Intrusion Detection on CPU and GPU
When analyzing the behavior pattern of the object that is composed of a set of various samples, it is an efficient way to analyze its pattern based on the features’ probability distribution among a set of samples. Contrast to the traditional ways that focus on each sample’s feature patterns and then build a model to differentiate this one from another one, the probability distribution based pattern recognition can conclude a set of samples' features by analyzing its sample probability distribution model and then differentiate this set of samples from another one. By this way, not only can we save a lot of time and resource, but also it is more representative to display the group features of a set of samples. This paper makes use of this special advantage of the probability distribution based pattern recognition to detect the network anomalies by analyzing the different guideline such as Probability Distribution, Relative Entropy and Normalized Relative Entropy. In addition, this paper also analyzes the efficiency among the different algorithm implementations, CPU based serial algorithm, GPU based parallel algorithm and GPU based MapReduce parallel algorithms.
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