Comparing Single and Multiple Bayesian Classifiers Approaches for Network Intrusion Detection

Kok-Chin Khor, Choo-Yee Ting, S. Phon-Amnuaisuk
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引用次数: 7

Abstract

A general strategy for improving the performance of classifiers is to consider multiple classifiers approach. Previous research works have shown that combination of different types of classifiers provided a good classification results. We noticed a raising interest to incorporate single Bayesian classifier into the multiple classifiers framework. In this light, this research work explored the possibility of employing multiple classifiers approach, but limited to variations of Bayesian technique, namely Naïve Bayes Classifier, Bayesian Networks, and Expert-elicited Bayesian Network. Empirical evaluations were conducted based on a standard network intrusion dataset and the results showed that the multiple Bayesian classifiers approach gave insignificant increase of performance in detecting network intrusions as compared to a single Bayesian classifier. Naives Bayes Classifier should be considered in detecting network intrusions due to its comparable performance with multiple Bayesian classifiers approach. Moreover, time spent for building a NBC was less compared to others.
网络入侵检测中单贝叶斯分类器与多贝叶斯分类器方法的比较
提高分类器性能的一般策略是考虑多分类器方法。以往的研究表明,将不同类型的分类器组合使用可以获得很好的分类效果。我们注意到将单个贝叶斯分类器合并到多个分类器框架中的兴趣越来越大。鉴于此,本研究工作探索了采用多分类器方法的可能性,但仅限于贝叶斯技术的变体,即Naïve贝叶斯分类器、贝叶斯网络和专家诱导贝叶斯网络。基于标准网络入侵数据集进行了实证评估,结果表明,与单一贝叶斯分类器相比,多贝叶斯分类器方法在检测网络入侵方面的性能提高不显著。由于朴素贝叶斯分类器与多贝叶斯分类器方法的性能相当,因此在检测网络入侵时应考虑使用朴素贝叶斯分类器。此外,与其他公司相比,建立NBC所花费的时间更少。
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