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Multivariate analysis of variance for functional data

机译:功能数据方差的多元分析

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Functional data are being observed frequently in many scientific fields, and therefore most of the standard statistical methods are being adapted for functional data. The multivariate analysis of variance problem for functional data is considered. It seems to be of practical interest similarly as the one-way analysis of variance for such data. For the MANOVA problem for multivariate functional data, we propose permutation tests based on a basis function representation and tests based on random projections. Their performance is examined in comprehensive simulation studies, which provide an idea of the size control and power of the tests and identify differences between them. The simulation experiments are based on artificial data and real labeled multivariate time series data found in the literature. The results suggest that the studied testing procedures can detect small differences between vectors of curves even with small sample sizes. Illustrative real data examples of the use of the proposed testing procedures in practice are also presented.
机译:在许多科学领域中,功能数据都经常被观察到,因此大多数标准统计方法都适用于功能数据。考虑功能数据的方差问题的多元分析。似乎与此类数据的单向方差分析相似,具有实际意义。对于多元函数数据的MANOVA问题,我们提出了基于基函数表示的置换检验和基于随机投影的检验。在全面的模拟研究中检查了它们的性能,这些研究提供了尺寸控制和测试功效的概念,并确定了它们之间的差异。模拟实验基于人工数据和文献中的真实标记的多元时间序列数据。结果表明,所研究的测试程序即使在样本量较小的情况下也可以检测曲线向量之间的微小差异。还提供了在实践中使用建议的测试程序的说明性真实数据示例。

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