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arXiv 提交日期: 2026-02-04
📄 Abstract - Comparative Insights on Adversarial Machine Learning from Industry and Academia: A User-Study Approach

An exponential growth of Machine Learning and its Generative AI applications brings with it significant security challenges, often referred to as Adversarial Machine Learning (AML). In this paper, we conducted two comprehensive studies to explore the perspectives of industry professionals and students on different AML vulnerabilities and their educational strategies. In our first study, we conducted an online survey with professionals revealing a notable correlation between cybersecurity education and concern for AML threats. For our second study, we developed two CTF challenges that implement Natural Language Processing and Generative AI concepts and demonstrate a poisoning attack on the training data set. The effectiveness of these challenges was evaluated by surveying undergraduate and graduate students at Carnegie Mellon University, finding that a CTF-based approach effectively engages interest in AML threats. Based on the responses of the participants in our research, we provide detailed recommendations emphasizing the critical need for integrated security education within the ML curriculum.

顶级标签: machine learning model evaluation systems
详细标签: adversarial machine learning security education user study ctf challenges cybersecurity 或 搜索:

产业界与学术界关于对抗性机器学习的比较洞察:一项用户研究方法 / Comparative Insights on Adversarial Machine Learning from Industry and Academia: A User-Study Approach


1️⃣ 一句话总结

这项研究通过调查和实验发现,无论是行业专家还是学生,接受过网络安全教育的人会更关注对抗性机器学习的安全威胁,并且采用夺旗挑战等实践教学方式能有效提升人们对这类威胁的兴趣和学习效果。

源自 arXiv: 2602.04753