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Robust misinterpretation of confidence intervals

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TLDR
Although all six statements were false, both researchers and students endorsed, on average, more than three statements, indicating a gross misunderstanding of CIs, which suggests that many researchers do not know the correct interpretation of a CI.
Abstract
Null hypothesis significance testing (NHST) is undoubtedly the most common inferential technique used to justify claims in the social sciences. However, even staunch defenders of NHST agree that its outcomes are often misinterpreted. Confidence intervals (CIs) have frequently been proposed as a more useful alternative to NHST, and their use is strongly encouraged in the APA Manual. Nevertheless, little is known about how researchers interpret CIs. In this study, 120 researchers and 442 students—all in the field of psychology—were asked to assess the truth value of six particular statements involving different interpretations of a CI. Although all six statements were false, both researchers and students endorsed, on average, more than three statements, indicating a gross misunderstanding of CIs. Self-declared experience with statistics was not related to researchers’ performance, and, even more surprisingly, researchers hardly outperformed the students, even though the students had not received any education on statistical inference whatsoever. Our findings suggest that many researchers do not know the correct interpretation of a CI. The misunderstandings surrounding p-values and CIs are particularly unfortunate because they constitute the main tools by which psychologists draw conclusions from data.

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References
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TL;DR: It is argued that the statistical consistency test of Ioannidis and Trikalinos (2007) is unnecessary because publication bias exists almost everywhere as property of the research process, not individual studies.
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Confidence Intervals Make a Difference: Effects of Showing Confidence Intervals on Inferential Reasoning

TL;DR: The use of confidence intervals as an addition or as an alternative to null hypothesis significance testing (NHST) has been promoted as a means to make researchers more aware of the uncertainty that is inherent in statistical inference.

Identifying misconceptions about confidence intervals

TL;DR: This article presented a taxonomy of CI misconceptions identified by empirical studies, and explored faulty conceptual models that may be the source of the misconceptions, and proposed an educational tool that could be used to confront CI misconceptions.
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