A Hybrid Gradient Boost Model for Intrusion Detection

R. Vaishali
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Abstract

Due to the advancement of network threats at present, it is crucial to conduct research on identifying and preventing network anomalies. Machine learning (ML) is one strategy for Intrusion Detection System (IDS). Finding a reliable system to act as a networking shield is still difficult despite the fact that various IDS are suggested utilizing ML. This paper suggests a hybrid model combined with the gradient boost methods XGBoost and Lightgbm to forecast the various attacks that are urging in the network. To obtain the higher precision, hyperparameters of the algorithms are tuned. The proposed system is trained using the UNSW-NB15 dataset, which contains attacks for Generic, Exploits, Denial of Service (DoS), Shellcode, Fuzzer, and Reconnaissance. The system has an average accuracy of 99.89%. Because of the recent dataset training, the proposed system is relevant to modern Intrusion Detection Systems used in current network systems.
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一种用于入侵检测的混合梯度增强模型
随着网络威胁的不断发展,对网络异常的识别和预防进行研究显得尤为重要。机器学习(ML)是入侵检测系统(IDS)的一种策略。尽管利用机器学习提出了各种入侵检测方法,但找到一个可靠的系统作为网络屏蔽仍然很困难。本文提出了一个混合模型,结合梯度增强方法XGBoost和Lightgbm来预测网络中正在发生的各种攻击。为了获得更高的精度,对算法的超参数进行了调优。提出的系统使用UNSW-NB15数据集进行训练,该数据集包含通用攻击,漏洞利用,拒绝服务(DoS), Shellcode, Fuzzer和侦察。系统的平均准确率为99.89%。由于最近的数据集训练,所提出的系统与当前网络系统中使用的现代入侵检测系统相关。
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