ISSN: A/F

Adaptive Deception Strategies for Enhancing Cyber Resilience Against Advanced Persistent Threats (APTs)

Abstract

Advanced Persistent Threats (APTs) pose a significant and evolving challenge to modern cybersecurity. Traditional defense mechanisms often prove insufficient against their sophisticated techniques and patient persistence. This paper explores the application of adaptive cyber deception strategies to enhance cyber resilience against APTs. We propose a novel framework that dynamically adjusts deception tactics based on real-time threat intelligence, attacker behavior, and system vulnerability analysis. This framework leverages honeypots, honeynets, and decoy data strategically deployed throughout the network to detect, analyze, and disrupt APT activities. We present a detailed methodology for implementing and evaluating these adaptive deception strategies, including algorithms for deception selection, deployment, and maintenance. The results demonstrate a significant improvement in early threat detection, reduced attacker dwell time, and enhanced overall cyber resilience compared to static deception approaches. The research contributes to a more proactive and dynamic approach to cybersecurity, enabling organizations to better defend against the persistent and evolving threat posed by APTs.

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How to Cite

Dr. Shabana Faizal, (2025-05-28 19:40:03.420). Adaptive Deception Strategies for Enhancing Cyber Resilience Against Advanced Persistent Threats (APTs). JANOLI International Journal of Cyber Security, Volume QlF27Gax0kgzWMWcJnBX, Issue 2.