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A test for Gaussianity in Hilbert spaces via the empirical characteristic functional

Abstract

Let X1,X2,X_1,X_2, \ldots be independent and identically distributed random elements taking values in a separable Hilbert space H\mathbb{H}. With applications for functional data in mind, H\mathbb{H} may be regarded as a space of square-integrable functions, defined on a compact interval. We propose and study a novel test of the hypothesis H0H_0 that X1X_1 has some unspecified non-degenerate Gaussian distribution. The test statistic Tn=Tn(X1,,Xn)T_n=T_n(X_1,\ldots,X_n) is based on a measure of deviation between the empirical characteristic functional of X1,,XnX_1,\ldots,X_n and the characteristic functional of a suitable Gaussian random element of H\mathbb{H}. We derive the asymptotic distribution of TnT_n as nn \to \infty under H0H_0 and provide a consistent bootstrap approximation thereof. Moreover, we obtain an almost sure limit of TnT_n as well as a normal limit distribution of TnT_n under alternatives to Gaussianity. Simulations show that the new test is competitive with respect to the hitherto few competitors available.

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