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A distribution analogous to the canonical distribution used in testing the general linear hypothesis is developed for Model II analysis of variance for balanced classifications. As in the case of Model I analysis of variance, this standard distribution exhibits the sums of squares going into the analysis of variance table. By use of the standard form it is also shown that (i) all exact F-tests used in testing hypotheses based on balanced multiple classifications determine uniformly most powerful (u. m. p. ) similar regions although they are not likelihood ratio (L. R. ) tests, but (ii) in the balanced one-way classification, for all practical purposes, the test is an L. R. test, and is u. m. p. invariant. An exact F-test exists when we have a sum of squares, S₁ distributed as (k + ²₀) times a chi-square variate, where k > 0, independently of S₂, which is distributed as k times a chi-square variate. The test is then to reject the hypothesis that ²₀ = 0 whenever S₁/S₂ is greater than some suitably chosen number, c. As a corollary to property (i) it is shown that "of all invariant tests of ²₀ = 0 against ²₀ > 0 whose power is a function of ²₀/ (k + ²₀) only, the test S₁/S₂ > c is most powerful, providing S₁ and S₂, as defined above can be found. "
Leon H. Herbach (Tue,) studied this question.
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