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The insignificance of statistical significance testing

January 1, 1999

Despite their use in scientific journals such as The Journal of Wildlife Management, statistical hypothesis tests add very little value to the products of research. Indeed, they frequently confuse the interpretation of data. This paper describes how statistical hypothesis tests are often viewed, and then contrasts that interpretation with the correct one. I discuss the arbitrariness of P-values, conclusions that the null hypothesis is true, power analysis, and distinctions between statistical and biological significance. Statistical hypothesis testing, in which the null hypothesis about the properties of a population is almost always known a priori to be false, is contrasted with scientific hypothesis testing, which examines a credible null hypothesis about phenomena in nature. More meaningful alternatives are briefly outlined, including estimation and confidence intervals for determining the importance of factors, decision theory for guiding actions in the face of uncertainty, and Bayesian approaches to hypothesis testing and other statistical practices.

Publication Year 1999
Title The insignificance of statistical significance testing
DOI 10.2307/3802789
Authors Douglas H. Johnson
Publication Type Article
Publication Subtype Journal Article
Series Title Journal of Wildlife Management
Index ID 1001100
Record Source USGS Publications Warehouse
USGS Organization Northern Prairie Wildlife Research Center