On-Average KL-Privacy and its equivalence to Generalization for Max-Entropy Mechanisms

May 08, 2016 ยท Declared Dead ยท ๐Ÿ› Privacy in Statistical Databases

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Authors Yu-Xiang Wang, Jing Lei, Stephen E. Fienberg arXiv ID 1605.02277 Category stat.ML: Machine Learning (Stat) Cross-listed cs.CR Citations 50 Venue Privacy in Statistical Databases Last Checked 4 months ago
Abstract
We define On-Average KL-Privacy and present its properties and connections to differential privacy, generalization and information-theoretic quantities including max-information and mutual information. The new definition significantly weakens differential privacy, while preserving its minimalistic design features such as composition over small group and multiple queries as well as closeness to post-processing. Moreover, we show that On-Average KL-Privacy is **equivalent** to generalization for a large class of commonly-used tools in statistics and machine learning that samples from Gibbs distributions---a class of distributions that arises naturally from the maximum entropy principle. In addition, a byproduct of our analysis yields a lower bound for generalization error in terms of mutual information which reveals an interesting interplay with known upper bounds that use the same quantity.
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