Abstract
The following theorem is proved. If a univariate distribution has moments of first and second order and admits a homogeneous and symmetric quadratic statistic $Q$ which is independently distributed of the mean of a sample of $n$ drawn from this distribution, then it is either the normal distribution ($Q$ is then proportional to the variance) or the degenerate distribution (in this case no restriction is imposed on $Q$) or a step function with two symmetrically located steps (in this case $Q$ is the sum of the squared observations). The converse of this statement is also true.
Citation
Eugene Lukacs. "The Stochastic Independence of Symmetric and Homogeneous Linear and Quadratic Statistics." Ann. Math. Statist. 23 (3) 442 - 449, September, 1952. https://doi.org/10.1214/aoms/1177729389
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