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Original Articles

Privacy-preserving linear and nonlinear approximation via linear programming

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Pages 207-216 | Received 12 Apr 2012, Accepted 06 Jul 2012, Published online: 27 Jul 2012
 

Abstract

We propose a novel privacy-preserving random kernel approximation based on a data matrix AR m×n whose rows are divided into privately owned blocks. Each block of rows belongs to a different entity that is unwilling to share its rows or make them public. We wish to obtain an accurate function approximation for a given yR m corresponding to each of the m rows of A. Our approximation of y is a real function on R n evaluated at each row of A and is based on the concept of a reduced kernel K(A, B′), where B′ is the transpose of a completely random matrix B. The proposed linear-programming-based approximation, which is public but does not reveal the privately held data matrix A, has accuracy comparable to that of an ordinary kernel approximation based on a publicly disclosed data matrix A.

Acknowledgements

The research described in this Data Mining Institute Report 11-04, October 2011, was supported by the Microsoft Corporation and ExxonMobil, revised June 2012.

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