网络安全革命:探索机器学习和逻辑推理对网络威胁和缓解的协同作用

Deepak Puthal, S. Mohanty, Amit Kumar Mishra, C. Yeun, Ernesto Damiani
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摘要

机器学习(ML)和逻辑推理(LR)在网络安全中的整合是一个新兴领域,在提高安全系统的效率和有效性方面显示出巨大的潜力。虽然机器学习可以检测大量数据中的异常和模式,但LR可以提供对威胁的更高层次的理解,并实现更好的决策。本文探讨了机器学习和LR在网络安全中的未来,并强调了这两种方法的集成如何导致更强大的安全系统。我们讨论了几个展示集成方法有效性的用例,例如威胁检测和响应、漏洞评估和安全策略实施。最后,我们确定了几个有助于推进该领域的研究方向,包括开发更可解释的ML模型和人在环方法的集成。
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Revolutionizing Cyber Security: Exploring the Synergy of Machine Learning and Logical Reasoning for Cyber Threats and Mitigation
The integration of machine learning (ML) and logical reasoning (LR) in cyber security is an emerging field that shows great potential for improving the efficiency and effectiveness of security systems. While ML can detect anomalies and patterns in large amounts of data, LR can provide a higher-level understanding of threats and enable better decision-making. This paper explores the future of ML and LR in cyber security and highlights how the integration of these two approaches can lead to more robust security systems. We discuss several use cases that demonstrate the effectiveness of the integrated approach, such as threat detection and response, vulnerability assessment, and security policy enforcement. Finally, we identify several research directions that will help advance the field, including the development of more explainable ML models and the integration of human-in-the-loop approaches.
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