Researchers’ data analysis choices: an excess of false positives?

被引:0
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作者
James A. Ohlson
机构
[1] Hong Kong Polytechnic University,
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Data analysis; False positives; Publication process; C18;
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摘要
This paper examines commonly applied methods of data analysis. Predicated on these methods, the main issue pertains to the plausibility of the studies’ end products, that is, their conclusions. I argue that the methods chosen often lead to unwarranted conclusions: the data analyses chosen tend to produce looked-for null rejections even though the null may be much more plausible on prior grounds. Two aspects of data analyses applied cause obvious problems. First, researchers tend to dismiss “preliminary” findings when the findings contradict the expected outcome of the research question (the “screen-picking” issue). Second, researchers rarely acknowledge that small p-values should be expected when the number of observations runs into the tens of thousands (the “large N” issue). This obviously enhances the chance for a null rejection even if the null hypothesis holds for all practical purposes. The discussion elaborates on these two aspects to explain why researchers generally avoid trying to mitigate false positives via supplementary data analyses. In particular, for no apparent good reasons, most research studiously avoids the use of hold-out samples. An additional topic in this paper concerns the dysfunctional consequences of the standard (“A-journal”) publication process, which tends to buttress the use of research methods prone to false or unwarranted null-rejections.
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页码:649 / 667
页数:18
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