Bounds on the sample complexity for private learning and private data release

作者:Amos Beimel, Hai Brenner, Shiva Prasad Kasiviswanathan, Kobbi Nissim

摘要

Learning is a task that generalizes many of the analyses that are applied to collections of data, in particular, to collections of sensitive individual information. Hence, it is natural to ask what can be learned while preserving individual privacy. Kasiviswanathan et al. (in SIAM J. Comput., 40(3):793–826, 2011) initiated such a discussion. They formalized the notion of private learning, as a combination of PAC learning and differential privacy, and investigated what concept classes can be learned privately. Somewhat surprisingly, they showed that for finite, discrete domains (ignoring time complexity), every PAC learning task could be performed privately with polynomially many labeled examples; in many natural cases this could even be done in polynomial time.

论文关键词:Differential privacy, PAC learning, Sample complexity, Private data release

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论文官网地址:https://doi.org/10.1007/s10994-013-5404-1