CRAIGTSep 11, 2024

Cyber Deception: State of the art, Trends and Open challenges

arXiv:2409.07194v18 citationsh-index: 15
Originality Synthesis-oriented
AI Analysis

It offers a systematic analysis for cybersecurity researchers and practitioners, but it is incremental as a survey paper.

This paper addresses gaps in the literature on Cyber Deception (CYDEC) by providing a comprehensive review and classification of its components, frameworks, and solutions, including both AI and non-AI approaches, and identifies trends and open challenges.

The growing interest in cybersecurity has significantly increased articles designing and implementing various Cyber Deception (CYDEC) mechanisms. This trend reflects the urgent need for new strategies to address cyber threats effectively. Since its emergence, CYDEC has established itself as an innovative defense against attackers, thanks to its proactive and reactive capabilities, finding applications in numerous real-life scenarios. Despite the considerable work devoted to CYDEC, the literature still presents significant gaps. In particular, there has not been (i) a comprehensive analysis of the main components characterizing CYDEC, (ii) a generic classification covering all types of solutions, nor (iii) a survey of the current state of the literature in various contexts. This article aims to fill these gaps through a detailed review of the main features that comprise CYDEC, developing a comprehensive classification taxonomy. In addition, the different frameworks used to generate CYDEC are reviewed, presenting a more comprehensive one. Existing solutions in the literature using CYDEC, both without Artificial Intelligence (AI) and with AI, are studied and compared. Finally, the most salient trends of the current state of the art are discussed, offering a list of pending challenges for future research.

Foundations

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