基于NBHoeffding规则的无线传感器网络决策树入侵检测

S. Geetha, U. N. Dulhare, S.S. Sivatha Sindhu
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引用次数: 9

摘要

本文的目标是建立一个实用的无线传感器网络入侵检测系统,该系统可以分析网络中的流量模式特征,识别网络中的入侵活动。研究结果表明,选择高效、快速的决策树模式进行特征最优的入侵检测,不仅提高了传感器网络的检测能力,而且节省了传感器网络的能量、计算量和内存。此外,将各种基于规则的决策树分类器如交替决策树、决策树桩、J48、逻辑模型树、朴素贝叶斯树和快速决策树学习器与一类基于Hoeffding规则的决策树进行了比较,显示出更好、更快的检测能力。在包含正常和异常数据的三个不同的公共数据集上,对增强特征空间和决策树范式进行了评估,并对各种Hoeffding以及其他决策树算法进行了评估。这种方法证明了Hoeffding树最适合在线检测和处理流传感器数据,并且在传感器网络这样的资源约束环境中有效地利用了内存
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrusion Detection using NBHoeffding Rule based Decision Tree for Wireless Sensor Networks
The objective of this paper is to build a practical intrusion detection system for wireless sensor networks which analyze the characteristics of traffic patterns and identify the intrusive activities in the network. It is to show that the choice of efficient and fast decision tree paradigm for intrusion detection with optimal features enhance the detection capability as well as saves energy, computation and memory of sensor networks. In addition, various rule based decision tree classifiers like Alternating Decision Tree, Decision Stump, J48, Logical Model Tree, Naive Bayes Tree and Fast Decision Tree learner have been compared with a family of Hoeffding rule based decision tree which shows better and fast detection capability. The evaluation of the enhanced feature space and the decision tree paradigm, on three different public dataset containing normal and anomalous data have been performed for various Hoeffding as well as other decision tree algorithms. With this approach it is proved that Hoeffding tree are best suited for online detection and handling of streaming sensor data with the efficient usage of memory in a resource constraint environment like sensor networks
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