Can visualization alleviate dichotomous thinking Effects of visual representations on the cliff effect
Helske Jouni; Helske Satu; Cooper Matthew; Ynnerman Anders; Besançon Lonni
https://urn.fi/URN:NBN:fi-fe2021093048753
Tiivistelmä
Common reporting styles for statistical results in scientific articles, 
such as \pvalues\ and confidence intervals (CI), have been reported to 
be prone to dichotomous interpretations, especially with respect to the 
null hypothesis significance testing framework. For example when the 
p-value is small enough or the CIs of the mean effects of a studied drug
 and a placebo are not overlapping, scientists tend to claim significant
 differences while often disregarding the magnitudes and absolute 
differences in the effect sizes. This type of reasoning has been shown 
to be potentially harmful to science. Techniques relying on the visual 
estimation of the strength of evidence have been recommended to reduce 
such dichotomous interpretations but their effectiveness has also been 
challenged. We ran two experiments on researchers with expertise in 
statistical analysis to compare several alternative representations of 
confidence intervals and used Bayesian multilevel models to estimate the
 effects of the representation styles on differences in researchers' 
subjective confidence in the results. We also asked the respondents' 
opinions and preferences in representation styles. Our results suggest 
that adding visual information to classic CI representation can decrease
 the tendency towards dichotomous interpretations measured as the cliff 
effect: the sudden drop in confidence around p-value 0.05 compared with 
classic CI visualization and textual representation of the CI with 
p-values. All data and analyses are publicly available at 
https://github.com/helske/statvis.
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