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An exact test for trend among binomial proportions based on a modified Baumgartner-Weiss-Schindler statistic

Markus Neuhauser

Journal of Applied Statistics, 2006, vol. 33, issue 1, 79-88

Abstract: The Cochran-Armitage test is the most frequently used test for trend among binomial proportions. This test can be performed based on the asymptotic normality of its test statistic or based on an exact null distribution. As an alternative, a recently introduced modification of the Baumgartner-Weiss-Schindler statistic, a novel nonparametric statistic, can be used. Simulation results indicate that the exact test based on this modification is preferable to the Cochran-Armitage test. This exact test is less conservative and more powerful than the exact Cochran-Armitage test. The power comparison to the asymptotic Cochran-Armitage test does not show a clear winner, but the difference in power is usually small. The exact test based on the modification is recommended here because, in contrast to the asymptotic Cochran-Armitage test, it guarantees a type I error rate less than or equal to the significance level. Moreover, an exact test is often more appropriate than an asymptotic test because randomization rather than random sampling is the norm, for example in biomedical research. The methods are illustrated with an example data set.

Keywords: Binomial data; Cochran-Armitage test; exact conditional test; randomization model (search for similar items in EconPapers)
Date: 2006
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DOI: 10.1080/02664760500389756

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