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Cybersecurity Revolution via Large Language Models and Explainable AI

Taher M. GhazalCollege of Arts & Science Applied Science University,Manama,Kingdom of BahrainJamshaid Iqbal JanjuaAl-Khawarizimi Institute of Computer Science (KICS), University of Engineering & Technology (UET),Lahore,PakistanWalid AbushibaCollege of Engineering, Applied Science University,BahrainMunir AhmadCollege of Informatics, Korea University,Seoul,Republic of Korea,02841Anaum IhsanAl-Khawarizimi Institute of Computer Science (KICS), University of Engineering & Technology (UET),Lahore,PakistanNidal A. Al-DmourCollege of Engineering, Mutah University,Department of Computer Engineering,Jordan
2024en
ABI

Аннотация

Integrating Groundbreaking advancements in AI, like language models, interpretable AI, and machine learning, opens up a world of exciting new possibilities. The Evolving face of cybersecurity and Modern cyber threats are complex and well crafted; hence, conventional cybersecurity mechanisms show difficulty in staying relevant. LLMs, especially based on Transformer architecture will noticeably increase the accuracy and speed of detecting threats. Transparency and trust are increased by XAI approaches like SHAP and LIME, which offer facts about ML model predictions. This paper explores the literature that demonstrates the integration between XAI and LLMs in cybersecurity, exemplifying how this trinity of models has the potential to help attenuate errors producing reduced false positives and improve how we detect threats. Thinking about the possibilities the challenges including performance Explainability trade-offs, the need for common evaluation metrics, and the black-box nature of AI Models, remain in place. Solving these will help to enhance AI-driven solutions in cybersecurity.

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