Privately Solving Linear Programs

15 Feb 2014  ·  Justin Hsu, Aaron Roth, Tim Roughgarden, Jonathan Ullman ·

In this paper, we initiate the systematic study of solving linear programs under differential privacy. The first step is simply to define the problem: to this end, we introduce several natural classes of private linear programs that capture different ways sensitive data can be incorporated into a linear program. For each class of linear programs we give an efficient, differentially private solver based on the multiplicative weights framework, or we give an impossibility result.

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