Abstract
Let $Z$ be a random vector whose distribution is spherically symmetric about the origin. A random vector $X$ which is representable as the image of $Z$ under affine transformation is said to have an ellipsoidally symmetric distribution. The model of ellipsoidal symmetry is a useful generalization of multivariate normality. This paper proposes and studies some goodness-of-fit tests which have good asymptotic power over a broad spectrum of alternatives to ellipsoidal symmetry.
Citation
Rudolf Beran. "Testing for Ellipsoidal Symmetry of a Multivariate Density." Ann. Statist. 7 (1) 150 - 162, January, 1979. https://doi.org/10.1214/aos/1176344561
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