Tutorials in Quantitative Methods for Psychology (Sep 2021)
Le traitement statistique des proportions incluant l'analyse de variance, avec des exemples // The statistical handling of proportions including analysis of variance, with worked out examples
Abstract
The simple proportion, $p = x / n$, a pervasive statistical tool equally used in public and academic research areas, is in the literature still short of the necessary analytical implements needed for full-scale statistical treatments. This is partly ascribable to its discrete numerical character, but it proceeds mostly from its other distributional properties: its variance is tied up with its expectation, and its density shows a strong U-shaped asymmetry reactive to its $\pi $ parameter, the habitual normal-based analytical procedures thus being contra-indicated. We here revive the Fisher-Yates angular transformation of the proportion, $y\left ( {x,n} \right ) = si{n^{ - 1}}\sqrt x $, heralded for its $\pi $-independent variance and smoothed-out non-normality, and put to trial three of its improved descendants (Anscombe 1948, Tukey & Freeman 1950, Chanter 1975). Following a would-be thorough study of the three $y$ functions retained (bias, variance, precision, test accuracy, power), largely documented in Laurencelle's (2021a) investigation, we develop and illustrate the $z$ test of significance on one proportion, the $z$ test on the difference of two independent proportions, the analysis of variance of $k \ge 2$ independent proportions and finally the test of two and anova of $k$ correlated proportions. A critical appraisal of the McNemar test for the difference of two correlated proportions is also essayed.
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