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The use of transformations to stabilize the variance of binomial or Poisson data is familiar (Anscombe 1, Bartlett 2, 3, Curtiss 4, Eisenhart 5). The comparison of transformed binomial or Poisson data with percentage points of the normal distribution to make approximate significance tests or to set approximate confidence intervals is less familiar. Mosteller and Tukey 6 have recently made a graphical application of a transformation related to the square-root transformation for such purposes, where the use of "binomial probability paper" avoids all computation. We report here on an empirical study of a number of approximations, some intended for significance and confidence work and others for variance stabilization. For significance testing and the setting of confidence limits, we should like to use the normal deviate K exceeded with the same probability as the number of successes x from n in a binomial distribution with expectation np, which is defined by 12 K- e^-1{2t²} dt = Prob \x k |mid binomial, n, p\. The most useful approximations to K that we can propose here are N (very simple), N^+ (accurate near the usual percentage points), and N^ (quite accurate generally), where N = 2 ( (k + 1) q - (n - k) p). (This is the approximation used with binomial probability paper. ) N^+ = N + N + 2p - 112E, E = lesser of np and nq, N^ = N + (N - 2) (N + 2) 12 (1np + 1 - 1nq + 1), N^ = N^ + N^ + 2p - 112 E E = lesser of np and nq. For variance stabilization, the averaged angular transformation ^-1x{n + 1} + ^-1 x + 1{n+1} has variance within 6% of 1n + 1{2} (angles in radians), 821n + 1{2} (angles in degrees), for almost all cases where np 1. In the Poisson case, this simplifies to using x + x + 1 as having variance 1.
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Murray F. Freeman
John W. Tukey
The Annals of Mathematical Statistics
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Freeman et al. (Fri,) studied this question.
www.synapsesocial.com/papers/69d7364faa68b335b4f307cc — DOI: https://doi.org/10.1214/aoms/1177729756