Deceived by Immersion: A Systematic Analysis of Deceptive Design in Extended Reality
March 28, 2025 Β· Declared Dead Β· π ACM Computing Surveys
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Authors
Hilda Hadan, Lydia Choong, Leah Zhang-Kennedy, Lennart E. Nacke
arXiv ID
2503.22892
Category
cs.HC: Human-Computer Interaction
Citations
18
Venue
ACM Computing Surveys
Last Checked
4 months ago
Abstract
The well-established deceptive design literature has focused on conventional user interfaces. With the rise of extended reality (XR), understanding deceptive design's unique manifestations in this immersive domain is crucial. However, existing research lacks a full, cross-disciplinary analysis that analyzes how XR technologies enable new forms of deceptive design. Our study reviews the literature on deceptive design in XR environments. We use thematic synthesis to identify key themes. We found that XR's immersive capabilities and extensive data collection enable subtle and powerful manipulation strategies. We identified eight themes outlining these strategies and discussed existing countermeasures. Our findings show the unique risks of deceptive design in XR, highlighting implications for researchers, designers, and policymakers. We propose future research directions that explore unintentional deceptive design, data-driven manipulation solutions, user education, and the link between ethical design and policy regulations.
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