Increasing Feature Selection Accuracy through Recursive Method in Intrusion Detection System

Andreas Jonathan Silaban, Satria Mandala, Erwid Mustofa Jadied
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引用次数: 4

Abstract

Artificial intelligence semi supervised-based network intrusion detection system detects and identifies various types of attacks on network data using several steps, such as: data preprocessing, feature extraction, and classification. In this detection, the feature extraction is used for identifying features of attacks from the data; meanwhile the classification is applied for determining the type of attacks. Increasing the network data directly causes slow response time and low accuracy of the IDS. This research studies the implementation of wrapped-based and several classification algorithms to shorten the time of detection and increase accuracy. The wrapper is expected to select the best features of attacks in order to shorten the detection time while increasing the accuracy of detection. In line with this goal, this research also studies the effect of parameters used in the classification algorithms of the IDS. The experiment results show that wrapper is 81.275%. The result is higher than the method without wrapping which is 46.027%.
利用递归方法提高入侵检测系统特征选择的准确性
基于人工智能半监督的网络入侵检测系统通过数据预处理、特征提取、分类等步骤检测和识别针对网络数据的各种攻击。在这种检测中,特征提取用于从数据中识别攻击的特征;同时,将该分类用于确定攻击类型。网络数据的增加直接导致IDS的响应速度变慢,精度降低。为了缩短检测时间,提高准确率,本研究研究了基于包装和多种分类算法的实现。希望包装器能够选择攻击的最佳特征,以缩短检测时间,同时提高检测的准确性。根据这一目标,本研究还研究了IDS分类算法中使用的参数的影响。实验结果表明,包装率为81.275%。结果比不包装法高46.027%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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