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Bayesian Model Averaging of Bayesian Network Classifiers for Intrusion Detection

机译:用于入侵检测的贝叶斯网络分类器的贝叶斯模型平均

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摘要

Bayesian network (BN) classifiers with powerful reasoning capabilities have been increasingly utilized to detect intrusion with reasonable accuracy and efficiency. However, existing BN classifiers for intrusion detection suffer two problems. First, such BN classifiers are often trained from data using heuristic methods that usually select suboptimal models. Second, the classifiers are trained using very large datasets which may be time consuming to obtain in practice. When the size of training dataset is small, the performance of a single BN classifier is significantly reduced due to its inability to represent the whole probability distribution. To alleviate these problems, we build a Bayesian classifier by Bayesian Model Averaging(BMA) over the k-best BN classifiers, called Bayesian Network Model Averaging (BNMA) classifier. We train and evaluate BNMA classifier on the NSL-KDD dataset, which is less redundant, thus more judicial than the commonly used KDD Cup 99 dataset. We show that the BNMA classifier performs significantly better in terms of detection accuracy than the Naive Bayes classifier and the BN classifier built with heuristic method. We also show that the BNMA classifier trained using a smaller dataset outperforms two other classifiers trained using a larger dataset. This also implies that the BNMA is beneficial in accelerating the detection process due to its less dependance on the potentially prolonged process of collecting large training datasets.
机译:具有强大推理能力的贝叶斯网络(BN)分类器已越来越多地用于以合理的准确性和效率来检测入侵。但是,现有的用于入侵检测的BN分类器存在两个问题。首先,通常使用通常选择次优模型的启发式方法从数据中训练此类BN分类器。其次,使用非常大的数据集来训练分类器,这在实践中可能很耗时。当训练数据集的大小较小时,单个BN分类器的性能由于无法表示整个概率分布而大大降低。为了缓解这些问题,我们通过贝叶斯模型平均(BMA)在k个最佳BN分类器上构建了贝叶斯分类器,称为贝叶斯网络模型平均(BNMA)分类器。我们在NSL-KDD数据集上训练和评估BNMA分类器,该数据集的冗余度较低,因此比常用的KDD Cup 99数据集更具司法性。我们显示,与朴素贝叶斯分类器和使用启发式方法构建的BN分类器相比,BNMA分类器在检测精度方面的性能明显更好。我们还显示,使用较小数据集训练的BNMA分类器优于使用较大数据集训练的其他两个分类器。这也意味着BNMA有利于加速检测过程,因为它对收集大型训练数据集的潜在延长过程的依赖性较小。

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