Bots can Snoop: Uncovering and Mitigating Privacy Risks of Bots in Group Chats
October 09, 2024 Β· Declared Dead Β· π USENIX Security Symposium
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Authors
Kai-Hsiang Chou, Yi-Min Lin, Yi-An Wang, Jonathan Weiping Li, Tiffany Hyun-Jin Kim, Hsu-Chun Hsiao
arXiv ID
2410.06587
Category
cs.CR: Cryptography & Security
Citations
0
Venue
USENIX Security Symposium
Last Checked
4 months ago
Abstract
New privacy concerns arise with chatbots on group messaging platforms. Chatbots may access information beyond their intended functionalities, such as sender identities or messages unintended for chatbots. Chatbot developers may exploit such information to infer personal information and link users across groups, potentially leading to data breaches, pervasive tracking, or targeted advertising. Our analysis of conversation datasets shows that (1) chatbots often access far more messages than needed, and (2) when a user joins a new group with chatbots, there is a 3.6% chance that at least one of the chatbots can recognize and associate the user with their previous interactions in other groups. Although state-of-the-art (SoA) group messaging protocols provide robust end-to-end encryption and some platforms have implemented policies to limit chatbot access, no platforms successfully combine these features. This paper introduces SnoopGuard, a secure group messaging protocol that ensures user privacy against chatbots while maintaining strong end-to-end security. Our protocol offers (1) selective message access, preventing chatbots from accessing unrelated messages, and (2) sender anonymity, hiding user identities from chatbots. SnoopGuard achieves $O(\log n + m)$ message-sending complexity for a group of $n$ users and $m$ chatbots, compared to $O(\log(n + m))$ in SoA protocols, with acceptable overhead for enhanced privacy. Our prototype implementation shows that sending a message to a group of 50 users and 10 chatbots takes about 10 milliseconds when integrated with Message Layer Security (MLS).
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