Large-scale online deanonymization with LLMs
Sentiment Mix
Geography
Expert Signals
MyFest
author • 1 mention
r/MachineLearning
source • 1 mention
mellosouls
author • 1 mention
Hacker News
source • 1 mention
Extracted Claims
This paper shows that LLM agents can figure out who you are from your anonymous online posts.
Supported by 1 story
While it has been known that individuals can be uniquely identified by surprisingly few attributes, this was often practically limited.
Supported by 1 story
Data is often only available in unstructured form and deanonymization used to require human investigators to search and reason based on clues.
Supported by 1 story
In our new research, we show that this is not only possible but increasingly practical.
Supported by 1 story
https://arxiv.org/pdf/2602.16800
Supported by 1 story
Claim Contradictions
negation mismatch
A: This paper shows that LLM agents can figure out who you are from your anonymous online posts.
B: In our new research, we show that this is not only possible but increasingly practical.
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