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首页> 外文期刊>International Journal of Network Security & Its Applications >Combining Naive Bayes and Decision Tree for Adaptive Intrusion Detection
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Combining Naive Bayes and Decision Tree for Adaptive Intrusion Detection

机译:结合朴素贝叶斯和决策树进行自适应入侵检测

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In this paper, a new learning algorithm for adaptive network intrusion detection using naive Bayesian classifier and decision tree is presented, which performs balance detections and keeps false positives at acceptable level for different types of network attacks, and eliminates redundant attributes as well as contradictory examples from training data that make the detection model complex. The proposed algorithm also addresses some difficulties of data mining such as handling continuous attribute, dealing with missing attribute values, and reducing noise in training data. Due to the large volumes of security audit data as well as the complex and dynamic properties of intrusion behaviours, several data miningbased intrusion detection techniques have been applied to network-based traffic data and host-based data in the last decades. However, there remain various issues needed to be examined towards current intrusion detection systems (IDS). We tested the performance of our proposed algorithm with existing learning algorithms by employing on the KDD99 benchmark intrusion detection dataset. The experimental results prove that the proposed algorithm achieved high detection rates (DR) and significant reduce false positives (FP) for different types of network intrusions using limited computational resources.
机译:本文提出了一种新的基于朴素贝叶斯分类器和决策树的自适应网络入侵检测学习算法,该算法可以进行平衡检测并将误报率保持在可接受的水平,以应对不同类型的网络攻击,并消除了冗余属性和矛盾示例。训练数据使检测模型变得复杂。所提出的算法还解决了数据挖掘的一些困难,例如处理连续属性,处理缺失的属性值以及减少训练数据中的噪声。由于大量的安全审核数据以及入侵行为的复杂和动态特性,在过去的几十年中,几种基于数据挖掘的入侵检测技术已应用于基于网络的流量数据和基于主机的数据。但是,当前的入侵检测系统(IDS)仍然需要研究各种问题。我们通过在KDD99基准入侵检测数据集上采用现有的学习算法,对提出的算法的性能进行了测试。实验结果证明,所提出的算法使用有限的计算资源,能够针对不同类型的网络入侵实现较高的检测率(DR)并显着减少误报(FP)。

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