AI-Driven Solutions for Social Engineering Attacks: Detection, Prevention, and Response | IEEE Conference Publication | IEEE Xplore

AI-Driven Solutions for Social Engineering Attacks: Detection, Prevention, and Response


Abstract:

With the rapid evolution of cyber threats, social engineering attacks have become increasingly sophisticated, leveraging human vulnerabilities to bypass traditional secur...Show More

Abstract:

With the rapid evolution of cyber threats, social engineering attacks have become increasingly sophisticated, leveraging human vulnerabilities to bypass traditional security measures. While many conventional defense mechanisms have been overwhelmed, Artificial Intelligence (AI) offers a promising avenue to detect, prevent, and respond to these emerging threats. This research analyzes the intricacies of contemporary social engineering attacks, from their methods of deployment to their recent adaptations, such as leveraging social media and mobile apps. By contrasting prior solutions with the potential of AI-based defenses, we highlight the key role of machine learning in behavioral pattern recognition, Natural Language Processing's (NLP) efficacy in identifying phishing attempts, and predictive analytics' power to anticipate future attack vectors. Through detailed case studies, we showcase real-world scenarios where AI mechanisms have successfully countered social engineering ploys. The findings reveal that AI-enhanced mechanisms significantly improve the identification and mitigation of social engineering threats. Specifically, AI-driven behavioral analytics effectively detect subtle, manipulative cues indicative of phishing and other deceitful tactics, considerably reducing the incidence of successful attacks. Furthermore, predictive analytics has shown great promise in forecasting and preemptively countering potential cyber threats, In addition, while effective, AI tools must evolve with the changing tactics of cyber threats, Continuous learning and updating are necessary to maintain and improve accuracy and effectiveness.
Date of Conference: 26-28 February 2024
Date Added to IEEE Xplore: 22 May 2024
ISBN Information:
Conference Location: Dubai, United Arab Emirates

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