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首页> 外文期刊>Journal of the American statistical association >RANK: Large-Scale Inference With Graphical Nonlinear Knockoffs
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RANK: Large-Scale Inference With Graphical Nonlinear Knockoffs

机译:排名:具有图形非线性仿制的大规模推理

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Power and reproducibility are key to enabling refined scientific discoveries in contemporary big data applications with general high-dimensional nonlinear models. In this article, we provide theoretical foundations on the power and robustness for the model-X knockoffs procedure introduced recently in Candes, Fan, Janson and Lv in high-dimensional setting when the covariate distribution is characterized by Gaussian graphical model. We establish that under mild regularity conditions, the power of the oracle knockoffs procedure with known covariate distribution in high-dimensional linear models is asymptotically one as sample size goes to infinity. When moving away from the ideal case, we suggest the modified model-X knockoffs method called graphical nonlinear knockoffs (RANK) to accommodate the unknown covariate distribution. We provide theoretical justifications on the robustness of our modified procedure by showing that the false discovery rate (FDR) is asymptotically controlled at the target level and the power is asymptotically one with the estimated covariate distribution. To the best of our knowledge, this is the first formal theoretical result on the power for the knockoffs procedure. Simulation results demonstrate that compared to existing approaches, our method performs competitively in both FDR control and power. A real dataset is analyzed to further assess the performance of the suggested knockoffs procedure. for this article are available online.
机译:强大的功能和可重现性是使用通用的高维非线性模型在当代大数据应用中实现精细科学发现的关键。在本文中,当协变量分布以高斯图形模型为特征时,我们为Candes,Fan,Janson和Lv中在高维环境中引入的Model-X仿制过程的功效和鲁棒性提供了理论基础。我们建立了在温和规律性条件下,随着样本量达到无穷大,在高维线性模型中具有已知协变量分布的甲骨文仿冒程序的功效渐近渐近。当偏离理想情况时,我们建议使用称为图形非线性仿生(RANK)的改进的Model-X仿生方法,以适应未知的协变量分布。我们通过显示错误发现率(FDR)在目标水平上渐近控制,并且幂与估计的协变量分布渐近地控制,从而为修改后的过程的鲁棒性提供了理论依据。据我们所知,这是关于仿制程序效力的第一个正式理论结果。仿真结果表明,与现有方法相比,我们的方法在FDR控制和功率方面均具有竞争优势。分析实际数据集以进一步评估建议的仿制程序的性能。该文章可在线获得。

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