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Unconditionally Secure Computation on Large Distributed Databases with Vanishing Cost

4 October 2010
Ye Wang
S. Rane
Prakash Ishwar
Wei Sun
ArXiv (abs)PDFHTML
Abstract

Consider a network of k parties, each holding a long sequence of n entries (a database), with minimum vertex-cut greater than t. We show that any empirical statistic across the network of databases can be computed by each party with perfect privacy, against any set of t < k/2 passively colluding parties, such that the worst-case distortion and communication cost (in bits per database entry) both go to zero as n, the number of entries in the databases, goes to infinity. This is based on combining a striking dimensionality reduction result for random sampling with unconditionally secure multi-party computation protocols.

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