Title of article :
The widespread misinterpretation of p-values as error probabilities
Author/Authors :
Raymond Hubbard، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
The anonymous mixing of Fisherian (p-values) and Neyman–Pearsonian (α levels) ideas about testing,
distilled in the customary but misleading p < α criterion of statistical significance, has led researchers
in the social and management sciences (and elsewhere) to commonly misinterpret the p-value as a ‘dataadjusted’Type
I error rate. Evidence substantiating this claim is provided from a number of fronts, including
comments by statisticians, articles judging the value of significance testing, textbooks, surveys of scholars,
and the statistical reporting behaviours of applied researchers. That many investigators do not know the
difference between p’s and α’s indicates much bewilderment over what those most ardently sought research
outcomes—statistically significant results—means. Statisticians can play a leading role in clearing this
confusion. A good starting point would be to abolish thep < α criterion of statistical significance.
Keywords :
p < ? criterion , ? levels , ‘data-adjusted’ type I errors , Fisher , Neyman–Pearson , P-values , Significance Test
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS