Echoes of Privacy: Uncovering the Profiling Practices of Voice Assistants
September 11, 2024 Β· Declared Dead Β· π Proceedings on Privacy Enhancing Technologies
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Authors
Tina Khezresmaeilzadeh, Elaine Zhu, Kiersten Grieco, Daniel J. Dubois, Konstantinos Psounis, David Choffnes
arXiv ID
2409.07444
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.NI
Citations
3
Venue
Proceedings on Privacy Enhancing Technologies
Last Checked
4 months ago
Abstract
Many companies, including Google, Amazon, and Apple, offer voice assistants as a convenient solution for answering general voice queries and accessing their services. These voice assistants have gained popularity and can be easily accessed through various smart devices such as smartphones, smart speakers, smartwatches, and an increasing array of other devices. However, this convenience comes with potential privacy risks. For instance, while companies vaguely mention in their privacy policies that they may use voice interactions for user profiling, it remains unclear to what extent this profiling occurs and whether voice interactions pose greater privacy risks compared to other interaction modalities. In this paper, we conduct 1171 experiments involving a total of 24530 queries with different personas and interaction modalities over the course of 20 months to characterize how the three most popular voice assistants profile their users. We analyze factors such as the labels assigned to users, their accuracy, the time taken to assign these labels, differences between voice and web interactions, and the effectiveness of profiling remediation tools offered by each voice assistant. Our findings reveal that profiling can happen without interaction, can be incorrect and inconsistent at times, may take several days to weeks for changes to occur, and can be influenced by the interaction modality.
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