HCMar 25

Examining the Effect of Explanations of AI Privacy Redaction in AI-mediated Interactions

arXiv:2603.2473560.6h-index: 5
Predicted impact top 19% in HC · last 90 daysOriginality Synthesis-oriented
AI Analysis

This addresses the problem of user trust in privacy-sensitive AI-mediated interactions, offering incremental insights for designing transparent systems.

The study investigated how explanations of AI privacy redaction affect user trust in AI-mediated communication, finding that explanations increased perceived privacy effectiveness (p<0.05, Cohen's d≈0.3) and were more helpful with extensive redactions (p<0.05, Cohen's f≈0.2).

AI-mediated communication is increasingly being utilized to help facilitate interactions; however, in privacy sensitive domains, an AI mediator has the additional challenge of considering how to preserve privacy. In these contexts, a mediator may redact or withhold information, raising questions about how users perceive these interventions and whether explanations of system behavior can improve trust. In this work, we investigate how explanations of redaction operations can affect user trust in AI-mediated communication. We devise a scenario where a validated system removes sensitive content from messages and generates explanations of varying detail to communicate its decisions to recipients. We then conduct a user study with $180$ participants that studies how user trust and preferences vary for cases with different amounts of redacted content and different levels of explanation detail. Our results show that participants believed our system was more effective at preserving privacy when explanations were provided ($p<0.05$, Cohen's $d \approx 0.3$). We also found that contextual factors had an impact; participants relied more on explanations and found them more helpful when the system performed extensive redactions ($p<0.05$, Cohen's $f \approx 0.2$). We also found that explanation preferences depended on individual differences as well, and factors such as age and baseline familiarity with AI affected user trust in our system. These findings highlight the importance and challenge of balancing transparency and privacy in AI-mediated communications and suggest that adaptive, context-aware explanations are essential for designing privacy-aware, trustworthy AI systems.

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