NEW STRATEGIES FOR IMPROVING NETWORK SECURITY AGAINST CYBER ATTACK BASED ON INTELLIGENT ALGORITHMS

Mahmood Zaki Abdullah, Ali Kalid Jassim, Fadia Noori Hummadi, Mohammed Majid M. Al Khalidy
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Abstract

Gradually, since the number of linked computer systems that use networks linked to the Internet is raised the information that is delivered through those systems becomes more vulnerable to cyber threats. This article presents proposed algorithms based on Machine Learning (ML) that ensure early detection of cyber threats that cause network breaking through the use of the Correlation Ranking Filter feature selection method. These proposed algorithms were applied to the Multi-Step Cyber-Attack Dataset (MSCAD) which consists of 66 features. The proposed strategy will apply machine learning algorithms like Adaptive Boosting-Deep Learning (AdaBoost-Deep Learning) or (ABDL), Multi-Layer Perceptron (MLP), Bayesian Networks Model (BNM), and Random Forest (RF), the feature would be decreased to high valuable of 46 features were included with a threshold of 0.1 or higher. The accuracy would be increased when the no. of features decreased to 46 with a threshold of ≥ 0.1 with the ABDL algorithm producing an accuracy of 99.7076%. The obtained results showed that the proposed algorithm delivered a suitable accuracy of 99.6791% with the ABDL algorithm even with a higher number of features.
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基于智能算法的网络安全防范新策略
由于使用与互联网相连的网络的联网计算机系统数量不断增加,通过这些系统传输的信息越来越容易受到网络威胁。本文提出了基于机器学习(ML)的算法,通过使用相关排序过滤器特征选择方法,确保及早发现导致网络破坏的网络威胁。这些建议的算法应用于多步骤网络攻击数据集(MSCAD),该数据集由 66 个特征组成。提议的策略将应用自适应提升-深度学习(AdaBoost-Deep Learning)或(ABDL)、多层感知器(MLP)、贝叶斯网络模型(BNM)和随机森林(RF)等机器学习算法。当特征数量减少到 46 个,阈值≥ 0.1 时,准确率将提高,ABDL 算法的准确率为 99.7076%。结果表明,即使特征数量较多,拟议算法的准确率也能达到 ABDL 算法的 99.6791%。
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CiteScore
0.70
自引率
0.00%
发文量
74
审稿时长
50 weeks
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