Artificial intelligence for system security assurance: A systematic literature review

Author:

Wen Shao-Fang1,Shukla Ankur2,Katt Basel1

Affiliation:

1. Norwegian University of Science and Technology

2. Institute for Energy Technology

Abstract

Abstract

System Security Assurance (SSA) has emerged as a critical methodology for organizations to verify the trustworthiness of their systems by evaluating security measures against industry standards, legal requirements, and best practices to identify any weakness and demonstrate compliance. In recent years, the role of Artificial Intelligence (AI) in enhancing cybersecurity has received increased attention, with an increasing number of literature reviews highlighting its diverse applications. However, there remains a significant gap in comprehensive reviews that specifically address the integration of AI within SSA frameworks. This systematic literature review seeks to fill this research gap by assessing the current state of AI in SSA, identifying key areas where AI contributes to improve SSA processes, highlighting the limitations of current methodologies, and providing the guidance for future advancements in the field of AI-driven SSA.

Publisher

Springer Science and Business Media LLC

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