According to a well-known theorem of Cram\ér and Wold, if and are two Borel probability measures on whose projections onto each line in satisfy , then . Our main result is that, if and are both elliptical distributions, then, to show that , it suffices merely to check that for a certain set of lines . Moreover is optimal. The class of elliptical distributions contains the Gaussian distributions as well as many other multivariate distributions of interest. Our theorem contrasts with other variants of the Cram\ér-Wold theorem, in that no assumption is made about the finiteness of moments of and . We use our results to derive a statistical test for equality of elliptical distributions, and carry out a small simulation study of the test, comparing it with other tests from the literature. We also give an application to learning (binary classification), again illustrated with a small simulation
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