A Further Study of an L2-norm Based Test for the Equality of Several Covariance Functions
Abstract
For the multi-sample equal covariance function (ECF) testing problem, Zhang (2013) proposed an L2-norm based test. However, its asymptotic power and finite sample performance have not been studied. In this paper, its asymptotic power is investigated under some mild conditions. It is shown that the L2-norm based test is root-n consistent. In addition, intensive simulation studies demonstrate that in terms of size-controlling and power, the L2-norm based test outperforms the dimension-reduction based test proposed by Fremdt et al. (2013) when the functional data are less correlated or when the effective signal information is located in high frequencies. Two real data applications are also presented to demonstrate the good performance of the L2-norm based test.
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