| Literature DB >> 28820905 |
Balazs Aczel1, Bence Palfi2,3, Barnabas Szaszi1,4.
Abstract
Quantifying evidence is an inherent aim of empirical science, yet the customary statistical methods in psychology do not communicate the degree to which the collected data serve as evidence for the tested hypothesis. In order to estimate the distribution of the strength of evidence that individual significant results offer in psychology, we calculated Bayes factors (BF) for 287,424 findings of 35,515 articles published in 293 psychological journals between 1985 and 2016. Overall, 55% of all analyzed results were found to provide BF > 10 (often labeled as strong evidence) for the alternative hypothesis, while more than half of the remaining results do not pass the level of BF = 3 (labeled as anecdotal evidence). The results estimate that at least 82% of all published psychological articles contain one or more significant results that do not provide BF > 10 for the hypothesis. We conclude that due to the threshold of acceptance having been set too low for psychological findings, a substantial proportion of the published results have weak evidential support.Entities:
Mesh:
Year: 2017 PMID: 28820905 PMCID: PMC5562314 DOI: 10.1371/journal.pone.0182651
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Bayes factor evidence categories and the corresponding Bayes factor intervals [–].
| Bayes factor evidence categories | Value of the Bayes factor |
|---|---|
| Strong support for H1 | > 10 |
| Moderate support for H1 | 3–10 |
| Anecdotal support for H1 | 1–3 |
| Equal support for the hypotheses | 1 |
| Anecdotal support for H0 | 1/3–1 |
| Moderate support for H0 | 1/10–1/3 |
| Strong support for H0 | < 1/10 |
The proportion of significant t- and F-test results in the different Bayes factor evidence categories.
The corresponding Bayes factors were calculated with medium scaled prior distribution assuming independent-samples design.
| Strength of evidence | |||||||
|---|---|---|---|---|---|---|---|
| Strong H1 | Moderate H1 | Anecdotal H1 | Anecdotal H0 | Moderate H0 | Strong H0 | Total | |
| N/row total (%) | |||||||
| N | 157,184 | 61,579 | 65,677 | 2,861 | 116 | 7 | 287,424 |
Fig 1The relationship between published significant p-values and the corresponding Bayes factors for the t- and F- test results.
The Bayes factors were calculated with medium scaled prior distribution assuming independent-samples design for t- and F-test results. The stripes on the plot are the results of the general custom of rounding the t- and F-values to two decimals.
Fig 2Density plots with quartile lines for the Bayes factors in ranges of published significant p-values.
The corresponding Bayes factors were calculated on the t- and F- test results with medium scaled prior distribution assuming independent sample design. For visualization purposes, the leftmost plot depicts only the lowest quartile of the corresponding Bayes factors.