The widespread use of Large Language Model (LLM)-based conversational agents
(CAs), especially in high-stakes domains, raises many privacy concerns.
Building ethical LLM-based CAs that respect user privacy requires an in-depth
understanding of the privacy risks that concern users the most. However,
existing research, primarily model-centered, does not provide insight into
users' perspectives. To bridge this gap, we analyzed sensitive disclosures in
real-world ChatGPT conversations and conducted semi-structured interviews with
19 LLM-based CA users. We found that users are constantly faced with trade-offs
between privacy, utility, and convenience when using LLM-based CAs. However,
users' erroneous mental models and the dark patterns in system design limited
their awareness and comprehension of the privacy risks. Additionally, the
human-like interactions encouraged more sensitive disclosures, which
complicated users' ability to navigate the trade-offs. We discuss practical
design guidelines and the needs for paradigm shifts to protect the privacy of
LLM-based CA users.