A novel approach to intrusion detection using zero-shot learning hybrid partial labels

IF 0.6 Q3 ENGINEERING, MULTIDISCIPLINARY
Syed Atir Raza, Mehwish Shaikh, Raybal Akhtar, Aqsa Anwar
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引用次数: 0

Abstract

Computer networks have become the backbone of our interconnected world in today's technologically driven landscape. Unauthorized access or malicious activity carried out by threat actors to acquire control of network resources, exploit vulnerabilities, or undermine system integrity are examples of network intrusion. ZSL(Zero-Shot Learning) is a machine learning paradigm that addresses the problem of detecting and categorizing objects or concepts that were not present in the training data. . Traditional supervised learning algorithms for intrusion detection frequently struggle with insufficient labeled data and may struggle to adapt to unexpected assault patterns. In this article We have proposed a unique zero-shot learning hybrid partial label model suited to a large image-based network intrusion dataset to overcome these difficulties. The core contribution of this study is the creation and successful implementation of a novel zero-shot learning hybrid partial label model for network intrusion detection, which has a remarkable accuracy of 99.12%. The suggested system lays the groundwork for future study into other feature selection techniques and the performance of other machine learning classifiers on larger datasets. Such research can advance the state-of-the-art in intrusion detection and improve our ability to detect and prevent the network attacks. We hope that our research will spur additional research and innovation in this critical area of cybersecurity.
使用零点学习混合部分标签的入侵检测新方法
在当今技术驱动的时代,计算机网络已成为我们互联世界的支柱。威胁者为获取网络资源控制权、利用漏洞或破坏系统完整性而进行的未经授权访问或恶意活动都是网络入侵的例子。ZSL(Zero-Shot Learning,零点学习)是一种机器学习范式,用于解决检测和分类训练数据中不存在的对象或概念的问题。.用于入侵检测的传统监督学习算法经常在标注数据不足的情况下举步维艰,而且可能难以适应意想不到的攻击模式。在本文中,我们提出了一种独特的零点学习混合部分标签模型,适合基于图像的大型网络入侵数据集,以克服这些困难。本研究的核心贡献是创建并成功实施了一种用于网络入侵检测的新型零点学习混合部分标签模型,其准确率高达 99.12%。所建议的系统为今后研究其他特征选择技术和其他机器学习分类器在更大数据集上的性能奠定了基础。这些研究可以推动入侵检测技术的发展,提高我们检测和预防网络攻击的能力。我们希望我们的研究能推动网络安全这一关键领域的更多研究和创新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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40 weeks
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