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SEAR: A Multimodal Dataset for Analyzing AR-LLM-Driven Social Engineering Behaviors

30 May 2025
Tianlong Yu
Chenghang Ye
Zheyu Yang
Ziyi Zhou
Cui Tang
Zui Tao
Jun Zhang
Kailong Wang
Liting Zhou
Yang Yang
Ting Bi
    AAML
ArXiv (abs)PDFHTML
Main:5 Pages
10 Figures
Bibliography:2 Pages
Abstract

The SEAR Dataset is a novel multimodal resource designed to study the emerging threat of social engineering (SE) attacks orchestrated through augmented reality (AR) and multimodal large language models (LLMs). This dataset captures 180 annotated conversations across 60 participants in simulated adversarial scenarios, including meetings, classes and networking events. It comprises synchronized AR-captured visual/audio cues (e.g., facial expressions, vocal tones), environmental context, and curated social media profiles, alongside subjective metrics such as trust ratings and susceptibility assessments. Key findings reveal SEAR's alarming efficacy in eliciting compliance (e.g., 93.3% phishing link clicks, 85% call acceptance) and hijacking trust (76.7% post-interaction trust surge). The dataset supports research in detecting AR-driven SE attacks, designing defensive frameworks, and understanding multimodal adversarial manipulation. Rigorous ethical safeguards, including anonymization and IRB compliance, ensure responsible use. The SEAR dataset is available atthis https URL.

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@article{yu2025_2505.24458,
  title={ SEAR: A Multimodal Dataset for Analyzing AR-LLM-Driven Social Engineering Behaviors },
  author={ Tianlong Yu and Chenghang Ye and Zheyu Yang and Ziyi Zhou and Cui Tang and Zui Tao and Jun Zhang and Kailong Wang and Liting Zhou and Yang Yang and Ting Bi },
  journal={arXiv preprint arXiv:2505.24458},
  year={ 2025 }
}
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