Improving the Feature Set in IoT Intrusion Detection Problem Based on FP-Growth Algorithm

Le Thi Hong Van, Pham Van Huong, Le Duc Thuan, Nguyen Hieu Minh
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引用次数: 2

Abstract

This paper proposes and develops a new method to improve the feature set in IoT intrusion detection problem based on FP-Growth algorithm. Extracting a good feature set makes an important contribution to improving the accuracy of the IoT intrusion detection problem. Current studies on the detection of new IoT attacks focus on extracting independent features without considering the relationship between specific features and groups of features. Therefore, in the paper, we analyze and evaluate the original feature set to find the relationship between feature groups and add new features generated from relationships with a certain threshold to the original feature set to create the improved feature set. The detection of relationships reaching threshold is based on combination law mining technique according to FP-Growth algorithm. The improved feature set was tested with detection method based on convolution neural network with accuracy up to 98.2% and 1.45% improvement compared to the original feature set.
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基于FP-Growth算法的物联网入侵检测问题特征集改进
本文提出并发展了一种基于FP-Growth算法改进物联网入侵检测问题特征集的新方法。提取好的特征集对提高物联网入侵检测问题的准确性有重要贡献。目前对新的物联网攻击检测的研究侧重于提取独立的特征,而没有考虑特定特征与特征组之间的关系。因此,本文通过对原始特征集进行分析和评估,找到特征组之间的关系,并将具有一定阈值的关系生成的新特征添加到原始特征集中,生成改进的特征集。基于FP-Growth算法的组合规律挖掘技术,对达到阈值的关系进行检测。采用基于卷积神经网络的检测方法对改进后的特征集进行了测试,准确率达到98.2%,比原始特征集提高了1.45%。
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