破解威胁格局:社交工程攻击中的ChatGPT、FraudGPT和WormGPT

Polra Victor Falade
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引用次数: 1

摘要

在不断发展的网络安全领域,ChatGPT、FraudGPT和WormGPT等生成式人工智能模型的兴起既带来了创新的解决方案,也带来了前所未有的挑战。本研究深入探讨了生成式人工智能在社会工程攻击中的多方面应用,利用博客挖掘技术提供了对不断发展的威胁格局的见解。生成式人工智能模型彻底改变了网络攻击领域,使恶意行为者能够制作令人信服的个性化网络钓鱼诱饵,通过深度伪造操纵公众舆论,并利用人类的认知偏见。ChatGPT、FraudGPT和WormGPT这些模型增强了现有的威胁,并引入了新的风险维度。从模仿可信组织的网络钓鱼活动到模仿权威人物的深度伪造技术,我们探讨了生成人工智能如何放大网络犯罪分子的武器库。此外,我们还揭示了人工智能驱动的社会工程所利用的漏洞,包括心理操纵、有针对性的网络钓鱼和真实性危机。为了应对这些威胁,我们概述了一系列战略,包括传统安全措施、人工智能安全解决方案和网络安全协作方法。我们强调在打击人工智能增强的社会工程攻击中保持警惕、提高认识和加强监管的重要性。在人工智能模型快速发展和缺乏训练数据的环境中,防御生成式人工智能威胁需要不断适应和个人、组织和政府的集体努力。本研究旨在全面了解生成式人工智能和社会工程攻击之间的动态相互作用,为利益相关者提供驾驭这一复杂网络安全格局的知识。
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Decoding the Threat Landscape : ChatGPT, FraudGPT, and WormGPT in Social Engineering Attacks
In the ever-evolving realm of cybersecurity, the rise of generative AI models like ChatGPT, FraudGPT, and WormGPT has introduced both innovative solutions and unprecedented challenges. This research delves into the multifaceted applications of generative AI in social engineering attacks, offering insights into the evolving threat landscape using blog mining technique. Generative AI models have revolutionized the field of cyberattacks, empowering malicious actors to craft convincing and personalized phishing lures, manipulate public opinion through deepfakes, and exploit human cognitive biases. These models, ChatGPT, FraudGPT, and WormGPT, have augmented existing threats and ushered in new dimensions of risk. From phishing campaigns that mimic trusted organizations to deepfake technology impersonating authoritative figures, we explore how generative AI amplifies the arsenal of cybercriminals. Furthermore, we shed light on the vulnerabilities that AI-driven social engineering exploits, including psychological manipulation, targeted phishing, and the crisis of authenticity. To counter these threats, we outline a range of strategies, including traditional security measures, AI-powered security solutions, and collaborative approaches in cybersecurity. We emphasize the importance of staying vigilant, fostering awareness, and strengthening regulations in the battle against AI-enhanced social engineering attacks. In an environment characterized by the rapid evolution of AI models and a lack of training data, defending against generative AI threats requires constant adaptation and the collective efforts of individuals, organizations, and governments. This research seeks to provide a comprehensive understanding of the dynamic interplay between generative AI and social engineering attacks, equipping stakeholders with the knowledge to navigate this intricate cybersecurity landscape.
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