基于人工智能技术的网络安全威胁检测模型

Rahul Mishra
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引用次数: 0

摘要

近年来,由于计算机连接的惊人发展和与计算机相关的大量应用程序,确保网络安全的难度正在稳步增加。该系统还需要强大的定义,以应对日益增多的网络威胁。因此,通过开发入侵检测系统(IDS)来检测计算机网络中的不一致和威胁,可能会发挥网络安全的作用。利用人工智能,特别是机器学习技术,创建了一个有效的数据驱动入侵检测系统。本研究提出了一种新的基于二进制蚱蜢优化双支持向量机(BGOTSVM)的安全模型,该模型首先根据安全特征的相关性进行排序,然后根据所选择的重要特征开发IDS模型。通过降低特征维数,该方法不仅提高了对未识别测试的预测性能,而且降低了模型的计算开销。使用四种常见的机器学习技术进行试验,将结果与当前方法(决策树、随机决策森林、随机树和人工神经网络)进行比较。本研究的实验结果证实,建议的方法可以用作网络入侵检测的基于学习的模型,并证明,当在现实世界中使用时,它们优于传统的机器学习技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cyber Security Threat Detection Model Using Artificial Intelligence Technology
The difficulty of ensuring cyber-security is steadily growing as a result of the alarming development in computer connectivity and the sizeable number of applications associated to computers in recent years. The system also requires robust defines against the growing number of cyber threats. As a result, a possible role for cyber-security might be performed by developing Intrusion Detection Systems (IDS) to detect inconsistencies and threats in computer networks. An effective data-driven intrusion detection system has been created with the use of Artificial Intelligence, particularly Machine Learning techniques. This research proposes a novel Binary Grasshopper Optimized Twin Support Vector Machine (BGOTSVM) based security model which first considers the security features ranking according to their relevance before developing an IDS model based on the significant features that have been selected. By lowering the feature dimensions, this approach not only improves predictive performance for unidentified tests but also lowers the model's computational expense. Trials are conducted using four common ML techniques to compare the results to those of the current approaches (Decision Tree, Random Decision Forest, Random Tree, and Artificial Neural Network). The experimental findings of this study confirm that the suggested methods may be used as learning-based models for network intrusion detection and demonstrate that, when used in the real world, they outperform conventional ML techniques.
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