Testing the homogeneity between two samples of functional data is an important task. While this is feasible for intensely measured functional data, we explain why it is challenging for sparsely measured functional data and show what can be done for such data. In particular, we show that testing the marginal homogeneity based on point-wise distributions is feasible under some constraints and propose a new two sample statistic that works well with both intensively and sparsely measured functional data. The proposed test statistic is formulated upon Energy distance, and the critical value is obtained via the permutation test. The convergence rate of the test statistic to its population version is derived along with the consistency of the associated permutation test. To the best of our knowledge, this is the first paper that provides guaranteed consistency for testing the homogeneity for sparse functional data. The aptness of our method is demonstrated on both synthetic and real data sets.
翻译:测试两个功能数据样本之间的同质性是一项重要任务。 虽然对于测量量强的功能数据来说,这是可行的,但我们要解释的是,为什么测量量少的功能数据具有挑战性,并表明这些数据可以做什么。特别是,我们证明,在某些限制下,基于点分布的边际同质性测试是可行的,并提出一个新的两种抽样统计,对密集和测量量少的功能数据都有效。拟议的测试统计数据是用能源距离来编制的,关键值是通过调整测试获得的。测试统计数据与人口版本的趋同率是同与相关变异测试的一致性一起得出的。据我们所知,这是为检验稀有功能数据的同质性提供保证一致性的第一份文件。我们的方法的精细性体现在合成和真实的数据集上。