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Automatic detection of significant areas for functional data with directional error control

机译:通过方向误差控制自动检测功能数据的重要区域

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In this paper, we propose a large-scale multiple testing procedure to find the significant sub-areas between two samples of curves automatically. The procedure is optimal in that it controls the directional false discovery rate at any specified level on a continuum asymptotically. By introducing a nonparametric Gaussian process regression model for the two-sided multiple test, the procedure is computationally inexpensive. It can cope with problems with multidimensional covariates and accommodate different sampling designs across the samples. We further propose the significant curve/surface, giving an insight on dynamic significant differences between two curves. Simulation studies demonstrate that the proposed procedure enjoys superior performance with strong power and good directional error control. The procedure is also illustrated with the application to two executive function studies in hemiplegia.
机译:在本文中,我们提出了大规模的多个测试程序,以便自动地找到两个曲线样本之间的显着子区域。 该过程是最佳的,因为它在渐近的连续体上控制任何指定水平的定向假发现率。 通过为双面多次测试引入非参数高斯过程回归模型,该过程是计算地廉价的。 它可以应对多维协变量的问题,并在样品中适应不同的采样设计。 我们进一步提出了重要的曲线/表面,了解两条曲线之间的动态显着差异。 模拟研究表明,该拟议的程序具有卓越的性能,具有强大的功率和良好的定向误差控制。 还通过应用于偏瘫的两个行政职能研究的应用说明了该方法。

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