We consider an analysis of variance type problem, where the sample observations are random elements in an infinite dimensional space. This scenario covers the case, where the observations are random functions. For such a problem, we propose a test based on spatial signs. We develop an asymptotic implementation as well as a bootstrap implementation and a permutation implementation of this test and investigate their size and power properties. We compare the performance of our test with that of several mean based tests of analysis of variance for functional data studied in the literature. Interestingly, our test not only outperforms the mean based tests in several non-Gaussian models with heavy tails or skewed distributions, but in some Gaussian models also. Further, we also compare the performance of our test with the mean based tests in several models involving contaminated probability distributions. Finally, we demonstrate the performance of these tests in three real datasets: a Canadian weather dataset, a spectrometric dataset on chemical analysis of meat samples and a dataset on orthotic measurements on volunteers.
翻译:我们考虑对差异类型问题进行分析,在这种情况下,抽样观测是无限维空间的随机元素。这个假设包括了这种情形,观测是随机的功能。对于这样一个问题,我们提议以空间标志为基础进行测试。我们开发了无症状执行以及靴子执行和对试验的调整执行,并调查了测试的大小和功率特性。我们比较了测试的性能与文献所研究的功能数据差异分析的若干平均基础测试的性能。有趣的是,我们的测试不仅优于若干非加西语模型中具有重尾巴或斜面分布的平均值测试,而且还优于某些高斯模型。此外,我们还将测试的性能与若干模型中含有受污染概率分布的平均值测试进行比较。最后,我们用三种真实的数据集展示了这些测试的性能:加拿大气象数据集、肉类样品化学分析的分光度数据集和对志愿者的矫形测量数据集。