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An independence test for functional variables based on kernel normalized cross-covariance operator
Published 10 Nov 2022 in math.ST and stat.TH | (2211.05731v1)
Abstract: We propose an independence test for random variables valued into metric spaces by using a test statistic obtained from appropriately centering and rescaling the squared Hilbert-Schmidt norm of the usual empirical estimator of normalized cross-covariance operator. We then get asymptotic normality of this statistic under independence hypothesis, so leading to a new test for independence of functional random variables. A simulation study that allows to compare the proposed test to existing ones is provided.
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