自适应统计分析中基于Rademacher复杂度的控制能力和置信水平方法

L. Stefani, E. Upfal
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引用次数: 6

摘要

虽然标准统计推断技术和机器学习泛化界限假设测试是在独立于假设的选择数据上运行的,但实际数据分析和机器学习通常是迭代和自适应的过程,其中通常使用相同的保留数据来测试一系列假设(或模型),其中每个假设(或模型)可能取决于先前对相同数据的测试结果。在这项工作中,我们提出了一种严格、有效和实用的方法来控制在使用保留样本进行多次自适应测试时的泛化误差。我们的解决方案是基于Rademacher复杂度泛化界的一种新应用,适用于相关测试。我们通过广泛的模拟和与其他方法的比较来证明我们的方法的统计能力和实用性。特别是,我们证明了我们的严格解决方案比Dwork等人[1]-[3]提出的基于差分隐私的方法更强大和有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Rademacher Complexity Based Method for Controlling Power and Confidence Level in Adaptive Statistical Analysis
While standard statistical inference techniques and machine learning generalization bounds assume that tests are run on data selected independently of the hypotheses, practical data analysis and machine learning are usually iterative and adaptive processes where the same holdout data is often used for testing a sequence of hypotheses (or models), which may each depend on the outcome of the previous tests on the same data. In this work, we present RADABOUND a rigorous, efficient and practical procedure for controlling the generalization error when using a holdout sample for multiple adaptive testing. Our solution is based on a new application of the Rademacher Complexity generalization bounds, adapted to dependent tests. We demonstrate the statistical power and practicality of our method through extensive simulations and comparisons to alternative approaches. In particular, we show that our rigorous solution is a substantially more powerful and efficient than the differential privacy based approach proposed in Dwork et al. [1]–[3].
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