School of Statistics, Capital University of Economics and Business, Beijing, China.
School of Mathematics and Statistics, Northeast Normal University, Changchun, Jilin Province, China.
PLoS One. 2020 Jun 26;15(6):e0234094. doi: 10.1371/journal.pone.0234094. eCollection 2020.
An important inferential task in functional linear models is to test the dependence between the response and the functional predictor. The traditional testing theory was constructed based on the functional principle component analysis which requires estimating the covariance operator of the functional predictor. Due to the intrinsic high-dimensionality of functional data, the sample is often not large enough to allow accurate estimation of the covariance operator and hence causes the follow-up test underpowered. To avoid the expensive estimation of the covariance operator, we propose a nonparametric method called Functional Linear models with U-statistics TEsting (FLUTE) to test the dependence assumption. We show that the FLUTE test is more powerful than the current benchmark method (Kokoszka P,2008; Patilea V,2016) in the small or moderate sample case. We further prove the asymptotic normality of our test statistic under both the null hypothesis and a local alternative hypothesis. The merit of our method is demonstrated by both simulation studies and real examples.
在函数线性模型中,一个重要的推理任务是检验响应变量与函数预测变量之间的相关性。传统的检验理论是基于函数主成分分析构建的,这需要估计函数预测变量的协方差算子。由于功能数据的固有高维性,样本通常不够大,无法对协方差算子进行准确估计,因此后续的检验效果不佳。为了避免协方差算子的昂贵估计,我们提出了一种称为基于 U 统计量检验的函数线性模型(FLUTE)的非参数方法来检验相关性假设。我们表明,在小样本或中等样本情况下,FLUTE 检验比当前的基准方法(Kokoszka P,2008;Patilea V,2016)更有效。我们进一步证明了在零假设和局部备择假设下,我们的检验统计量的渐近正态性。通过模拟研究和实际例子证明了我们方法的优势。