A Synergistic Approach In Network Intrusion Detection By Neurosymbolic AI

Alice Bizzarri, Chung-En Yu, Brian Jalaian, Fabrizio Riguzzi, Nathaniel D. Bastian
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Abstract

The prevailing approaches in Network Intrusion Detection Systems (NIDS) are often hampered by issues such as high resource consumption, significant computational demands, and poor interpretability. Furthermore, these systems generally struggle to identify novel, rapidly changing cyber threats. This paper delves into the potential of incorporating Neurosymbolic Artificial Intelligence (NSAI) into NIDS, combining deep learning's data-driven strengths with symbolic AI's logical reasoning to tackle the dynamic challenges in cybersecurity, which also includes detailed NSAI techniques introduction for cyber professionals to explore the potential strengths of NSAI in NIDS. The inclusion of NSAI in NIDS marks potential advancements in both the detection and interpretation of intricate network threats, benefiting from the robust pattern recognition of neural networks and the interpretive prowess of symbolic reasoning. By analyzing network traffic data types and machine learning architectures, we illustrate NSAI's distinctive capability to offer more profound insights into network behavior, thereby improving both detection performance and the adaptability of the system. This merging of technologies not only enhances the functionality of traditional NIDS but also sets the stage for future developments in building more resilient, interpretable, and dynamic defense mechanisms against advanced cyber threats. The continued progress in this area is poised to transform NIDS into a system that is both responsive to known threats and anticipatory of emerging, unseen ones.
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利用神经符号人工智能进行网络入侵检测的协同方法
网络入侵检测系统(NIDS)中的主流方法往往受到资源消耗大、计算要求高和可解释性差等问题的阻碍。此外,这些系统通常难以识别新颖、快速变化的网络威胁。本文深入探讨了将神经符号人工智能(NSAI)纳入 NIDS 的潜力,将深度学习的数据驱动优势与符号人工智能的逻辑推理相结合,以应对网络安全领域的动态挑战,其中还包括详细的 NSAI 技术介绍,供网络专业人士探索 NSAI 在 NIDS 中的潜在优势。将 NSAI 纳入 NIDS 标志着在检测和解释复杂网络威胁方面的潜在进步,神经网络的强大模式识别能力和符号推理的解释能力将从中受益。通过分析网络流量数据类型和机器学习架构,我们展示了 NSAI 的独特能力,它能提供对网络行为更深刻的见解,从而提高检测性能和系统适应性。这种技术的融合不仅增强了传统 NIDS 的功能,还为未来针对高级网络威胁建立更具弹性、可解释性和动态防御机制的发展奠定了基础。这一领域的持续进步将使 NIDS 成为一个既能应对已知威胁,又能预测新出现的未知威胁的系统。
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