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引用次数: 0
摘要
确保负责任的人工智能实践对于基于机器学习(ML)原理的系统的发展至关重要,尤其是在网络安全的入侵检测等敏感领域。负责任的人工智能的一个基本方面是可重复性,它保证了研究成果的可靠性和透明度。在本文中,我们将探讨利用 ML 技术建立可重现的入侵检测这一关键挑战。我们利用 NSL-KDD 数据集和 Edge-IIoTset 进行了大量实验,以评估我们方法的有效性。我们的研究将精心的实验设计和谨慎的实施设置放在首位,与负责任的人工智能原则保持一致。通过严格的实验和深入的讨论,我们强调了可重复性作为确保入侵检测系统弹性和可靠性的基石的重要性。我们的研究结果为努力开发网络安全及其他领域负责任的人工智能解决方案的研究人员和从业人员提供了宝贵的见解。源代码可在 https://github.com/Salma-00/Machine-Learning-for-Intrusion-Detection 上公开访问。
Machine Learning for Intrusion Detection: A Reproducible Baseline is All You Need
Ensuring Responsible AI practices is paramount in the advancement of systems founded upon machine learning (ML) principles, particularly in sensitive domains like intrusion detection within cybersecurity. A fundamental aspect of Responsible AI is reproducibility, which guarantees the reliability and transparency of research outcomes. In this paper, we address the critical challenge of establishing reproducible for intrusion detection utilizing ML techniques. Leveraging the NSL-KDD dataset and the Edge-IIoTset, we carry out extensive experiments to evaluate the efficacy of our approach. Our study prioritizes meticulous experiment design and careful implementation setups, aligning with the principles of Responsible AI. Through rigorous experimentation and insightful discussions, we underscore the importance of reproducibility as a cornerstone in ensuring the resilience and reliability of intrusion detection systems. Our findings offer valuable insights for researchers and practitioners striving to develop Responsible AI solutions in cybersecurity and beyond. The source code is publicly accessible at https://github.com/Salma-00/Machine-Learning-for-Intrusion-Detection.