Which of the following is true when thinking about statistical significance and effect sizes?
A. A statistically significant effect will always have a meaningful effect size.
B. A large effect size is will always be statistically significant.
C. A statistically non-significant effect can have a large effect size.
B. A large effect size is will always be statistically significant.
Effect size is the difference between the groups. Now statistical significance means we are getting a result not attributed to chance. The larger the effect size, the more statistically significant the results even if the effect size is small or negligible.
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Which of the following is true when thinking about statistical significance and effect sizes? A. A...
Which of the following is true when thinking about statistical significance and effect sizes? A. A statistically significant effect will always have a meaningful effect size. B. A statistically significant effect will usually have a large effect size. C. A large effect size is will always be statistically significant. D. A statistically non-significant effect can have a large effect size.
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