可组合和通用的隐私通过截断CDP

Mark Bun, C. Dwork, G. Rothblum, T. Steinke
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引用次数: 138

摘要

我们提出了截断集中差分隐私(tCDP),它是差分隐私和集中差分隐私的一种改进。这个新定义提供了健壮和高效的组成保证,支持强大的算法技术,如通过子采样进行隐私放大,并实现更准确的统计分析。特别是,我们展示了一个中心任务,新定义使指数精度提高。
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Composable and versatile privacy via truncated CDP
We propose truncated concentrated differential privacy (tCDP), a refinement of differential privacy and of concentrated differential privacy. This new definition provides robust and efficient composition guarantees, supports powerful algorithmic techniques such as privacy amplification via sub-sampling, and enables more accurate statistical analyses. In particular, we show a central task for which the new definition enables exponential accuracy improvement.
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