Department of Information Engineering, Florence University, Florence, Italy.
Department of Computer Engineering, College of Computer and Information Sciences, Majmaah University, Majmaah, Saudi Arabia.
Sci Rep. 2023 Jun 5;13(1):9083. doi: 10.1038/s41598-023-36304-z.
The Internet of Things field has created many challenges for network architectures. Ensuring cyberspace security is the primary goal of intrusion detection systems (IDSs). Due to the increases in the number and types of attacks, researchers have sought to improve intrusion detection systems by efficiently protecting the data and devices connected in cyberspace. IDS performance is essentially tied to the amount of data, data dimensionality, and security features. This paper proposes a novel IDS model to improve computational complexity by providing accurate detection in less processing time than other related works. The Gini index method is used to compute the impurity of the security features and refine the selection process. A balanced communication-avoiding support vector machine decision tree method is performed to enhance intrusion detection accuracy. The evaluation is conducted using the UNSW-NB 15 dataset, which is a real dataset and is available publicly. The proposed model achieves high attack detection performance, with an accuracy of approximately 98.5%.
物联网领域给网络架构带来了诸多挑战。确保网络空间安全是入侵检测系统(IDS)的首要目标。由于攻击的数量和类型不断增加,研究人员一直在寻求通过有效保护网络空间中连接的数据和设备来改进入侵检测系统。IDS 的性能主要取决于数据量、数据维度和安全特性。本文提出了一种新颖的 IDS 模型,通过比其他相关工作更少的处理时间提供准确的检测,从而提高计算复杂性。基尼指数方法用于计算安全特性的不纯度,并细化选择过程。采用平衡通信避免支持向量机决策树方法来提高入侵检测精度。使用 UNSW-NB15 数据集进行评估,该数据集是一个真实数据集,可公开获得。所提出的模型在攻击检测性能方面表现出色,准确率约为 98.5%。