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CCS
2009
ACM

The bayesian traffic analysis of mix networks

14 years 3 months ago
The bayesian traffic analysis of mix networks
This work casts the traffic analysis of anonymity systems, and in particular mix networks, in the context of Bayesian inference. A generative probabilistic model of mix network architectures is presented, that incorporates a number of attack techniques in the traffic analysis literature. We use the model to build an Markov Chain Monte Carlo inference engine, that calculates the probabilities of who is talking to whom given an observation of network traces. We provide a thorough evaluation of its correctness and performance, and confirm that mix network with realistic parameters are secure. This approach enables us to apply established information theoretic anonymity metrics on complex mix networks, and extract information from anonymised traffic traces optimally.
Carmela Troncoso, George Danezis
Added 12 Aug 2010
Updated 12 Aug 2010
Type Conference
Year 2009
Where CCS
Authors Carmela Troncoso, George Danezis
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