Older and younger adults are influenced differently by dark pattern designs
October 05, 2023 Β· Declared Dead Β· π Social Science Research Network
"No code URL or promise found in abstract"
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Authors
Reza Ghaiumy Anaraky, Byron Lowens, Yao Li, Kaileigh A. Byrne, Marten Risius, Xinru Page, Pamela Wisniewski, Masoumeh Soleimani, Morteza Soltani, Bart Knijnenburg
arXiv ID
2310.03830
Category
cs.HC: Human-Computer Interaction
Citations
6
Venue
Social Science Research Network
Last Checked
4 months ago
Abstract
Considering that prior research has found older users undergo a different privacy decision-making process compared to younger adults, more research is needed to inform the behavioral privacy disclosure effects of these strategies for different age groups. To address this gap, we used an existing dataset of an experiment with a photo-tagging Facebook application. This experiment had a 2x2x5 between-subjects design where the manipulations were common dark pattern design strategies: framing (positive vs. negative), privacy defaults (opt-in vs. opt-out), and justification messages (positive normative, negative normative, positive rationale, negative rationale, none). We compared older (above 65 years old, N=44) and young adults (18 to 25 years old, N=162) privacy concerns and disclosure behaviors (i.e., accepting or refusing automated photo tagging) in the scope of dark pattern design. Overall, we find support for the effectiveness of dark pattern designs in the sense that positive framing and opt-out privacy defaults significantly increased disclosure behavior, while negative justification messages significantly decreased privacy concerns. Regarding older adults, our results show that certain dark patterns do lead to more disclosure than for younger adults, but also to increased privacy concerns for older adults than for younger.
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