College of Computer Science and Information Technology, King Faisal University, P.O. Box 4000, Al-Ahsa, Saudi Arabia.
Comput Intell Neurosci. 2022 Mar 18;2022:4705325. doi: 10.1155/2022/4705325. eCollection 2022.
The Internet plays a fundamental part in relentless correspondence, so its applicability can decrease the impact of intrusions. Intrusions are defined as movements that unfavorably influence the focus of a computer. Intrusions may sacrifice the reputability, integrity, privacy, and accessibility of the assets attacked. A computer security system will be traded off when an intrusion happens. The novelty of the proposed intelligent cybersecurity system is its ability to protect Internet of Things (IoT) devices and any networks from incoming attacks. In this research, various machine learning and deep learning algorithms, namely, the quantum support vector machine (QSVM), k-nearest neighbor (KNN), linear discriminant and quadratic discriminant long short-term memory (LSTM), and autoencoder algorithms, were applied to detect attacks from signature databases. The correlation method was used to select important network features by finding the features with a high-percentage relationship between the dataset features and classes. As a result, nine features were selected. A one-hot encoding method was applied to convert the categorical features into numerical features. The validation of the system was verified by employing the benchmark KDD Cup database. Statistical analysis methods were applied to evaluate the results of the proposed study. Binary and multiple classifications were conducted to classify the normal and attack packets. Experimental results demonstrated that KNN and LSTM algorithms achieved better classification performance for developing intrusion detection systems; the accuracy of KNN and LSTM algorithms for binary classification was 98.55% and 97.28%, whereas the KNN and LSTM attained a high accuracy for multiple classification (98.28% and 970.7%). Finally, the KNN and LSTM algorithms are fitting-based intrusion detection systems.
互联网在持续通信中起着至关重要的作用,因此它的适用性可以降低入侵的影响。入侵被定义为对计算机的焦点产生不利影响的行为。入侵可能会牺牲被攻击资产的声誉、完整性、隐私和可访问性。当发生入侵时,计算机安全系统将受到影响。所提出的智能网络安全系统的新颖之处在于它能够保护物联网 (IoT) 设备和任何网络免受入侵攻击。在这项研究中,应用了各种机器学习和深度学习算法,即量子支持向量机 (QSVM)、k-最近邻 (KNN)、线性判别和二次判别长短期记忆 (LSTM) 和自动编码器算法,从签名数据库中检测攻击。相关方法通过找到与数据集特征和类之间具有高百分比关系的特征,用于选择重要的网络特征。结果选择了九个特征。应用独热编码方法将分类特征转换为数值特征。通过使用基准 KDD Cup 数据库验证了系统的验证。应用统计分析方法评估了所提出研究的结果。进行了二进制和多分类,以对正常和攻击数据包进行分类。实验结果表明,KNN 和 LSTM 算法在开发入侵检测系统方面取得了更好的分类性能;KNN 和 LSTM 算法的二进制分类准确性分别为 98.55%和 97.28%,而 KNN 和 LSTM 算法的多分类准确性分别为 98.28%和 970.7%。最后,KNN 和 LSTM 算法是基于拟合的入侵检测系统。