Rescriber: Smaller-LLM-Powered User-Led Data Minimization for Navigating Privacy Trade-offs in LLM-Based Conversational Agent
The proliferation of LLM-based conversational agents has resulted in excessive disclosure of identifiable or sensitive information. However, existing technologies fail to offer perceptible control or account for users' personal preferences about privacy-utility tradeoffs due to the lack of user...
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Zusammenfassung: | The proliferation of LLM-based conversational agents has resulted in
excessive disclosure of identifiable or sensitive information. However,
existing technologies fail to offer perceptible control or account for users'
personal preferences about privacy-utility tradeoffs due to the lack of user
involvement. To bridge this gap, we designed, built, and evaluated Rescriber, a
browser extension that supports user-led data minimization in LLM-based
conversational agents by helping users detect and sanitize personal information
in their prompts. Our studies (N=12) showed that Rescriber helped users reduce
unnecessary disclosure and addressed their privacy concerns. Users' subjective
perceptions of the system powered by Llama3-8B were on par with that by GPT-4o.
The comprehensiveness and consistency of the detection and sanitization emerge
as essential factors that affect users' trust and perceived protection. Our
findings confirm the viability of smaller-LLM-powered, user-facing, on-device
privacy controls, presenting a promising approach to address the privacy and
trust challenges of AI. |
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DOI: | 10.48550/arxiv.2410.11876 |