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ASIACRYPT
2005
Springer

Privacy-Preserving Graph Algorithms in the Semi-honest Model

14 years 5 months ago
Privacy-Preserving Graph Algorithms in the Semi-honest Model
Abstract. We consider scenarios in which two parties, each in possession of a graph, wish to compute some algorithm on their joint graph in a privacy-preserving manner, that is, without leaking any information about their inputs except that revealed by the algorithm’s output. Working in the standard secure multi-party computation paradigm, we present new algorithms for privacy-preserving computation of APSD (all pairs shortest distance) and SSSD (single source shortest distance), as well as two new algorithms for privacy-preserving set union. Our algorithms are significantly more efficient than generic constructions. As in previous work on privacy-preserving data mining, we prove that our algorithms are secure provided the participants are “honest, but curious.”
Justin Brickell, Vitaly Shmatikov
Added 26 Jun 2010
Updated 26 Jun 2010
Type Conference
Year 2005
Where ASIACRYPT
Authors Justin Brickell, Vitaly Shmatikov
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