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Statistical significance in high-dimensional linear models

机译:高维线性模型的统计意义

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摘要

We propose a method for constructing p-values for general hypotheses in a high-dimensional linear model. The hypotheses can be local for testing a single regression parameter or they may be more global involving several up to all parameters. Furthermore, when considering many hypotheses, we show how to adjust for multiple testing taking dependence among the p-values into account. Our technique is based on Ridge estimation with an additional correction term due to a substantial projection bias in high dimensions. We prove strong error control for our p-values and provide sufficient conditions for detection: for the former, we do not make any assumption on the size of the true underlying regression coefficients while regarding the latter, our procedure might not be optimal in terms of power. We demonstrate the method in simulated examples and a real data application.
机译:我们提出了一种在高维线性模型中为一般假设构造p值的方法。假设可以是用于测试单个回归参数的局部假设,也可以是更全局的假设,涉及多个参数。此外,在考虑许多假设时,我们展示了如何在考虑到p值之间的依赖性的情况下针对多重检验进行调整。我们的技术基于Ridge估计,由于在高尺寸中存在较大的投影偏差,因此具有附加的校正项。我们证明了对p值的强大错误控制能力,并提供了足够的检测条件:对于前者,我们不对真实基础回归系数的大小做任何假设,而对于后者,我们的程序就以下方面而言可能不是最佳的功率。我们在模拟示例和实际数据应用中演示该方法。

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