Verified Computational Differential Privacy with Applications to Smart Metering

Computer Security Foundations Symposium(2013)

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摘要
EasyCrypt is a tool-assisted framework for reasoning about probabilistic computations in the presence of adversarial code, whose main application has been the verification of security properties of cryptographic constructions in the computational model. We report on a significantly enhanced version of EasyCrypt that accommodates a richer, user-extensible language of probabilistic expressions and, more fundamentally, supports reasoning about approximate forms of program equivalence. This enhanced framework allows us to express a broader range of security properties, that notably include approximate and computational differential privacy. We illustrate the use of the framework by verifying two protocols: a two-party protocol for computing the Hamming distance between bit-vectors, yielding two-sided privacy guarantees; and a novel, efficient, and privacy-friendly distributed protocol to aggregate smart meter readings into statistics and bills.
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关键词
verified computational differential privacy,smart metering,tool-assisted framework,probabilistic computation,computational differential privacy,approximate form,two-party protocol,enhanced framework,security property,enhanced version,probabilistic expression,computational model,aggregation,encryption,privacy,data privacy,probabilistic logic,differential privacy,reasoning,hamming distance,protocols,cryptographic protocols
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