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Leaky Thoughts: Large Reasoning Models Are Not Private Thinkers

Reasoning traces of large reasoning models used as personal agents often contain sensitive user data, which can be extracted through prompt injections or increased reasoning steps, highlighting a tension between improved utility and increased privacy risks.

Year
2025
Venue
arXiv 2025
Authors
5
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2506.15674ARXIV-DEFAULT
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Abstract

We study privacy leakage in the reasoning traces of large reasoning models used as personal agents. Unlike final outputs, reasoning traces are often assumed to be internal and safe. We challenge this assumption by showing that reasoning traces frequently contain sensitive user data, which can be extracted via prompt injections or accidentally leak into outputs. Through probing and agentic evaluations, we demonstrate that test-time compute approaches, particularly increased reasoning steps, amplify such leakage. While increasing the budget of those test-time compute approaches makes models more cautious in their final answers, it also leads them to reason more verbosely and leak more in their own thinking. This reveals a core tension: reasoning improves utility but enlarges the privacy attack surface. We argue that safety efforts must extend to the model's internal thinking, not just its outputs.

Authors

5