Description Arguments Details References See Also Examples
View source: R/RM.pwr.p.test.R
This function calculates the effective number of participants in a power analysis for one proportion after considering the effect of the number of measurement for each dependent variable and the intra- class correlation of these measurements.
h |
Cohen's h effect size |
sig.level |
Alpha level |
power |
Desired statistical power |
alternative |
Select one of "two.sided", "greater" or "less" |
corr |
Intra-class correlation between the replicated measurements. |
m |
Number of replicated measurements. |
The function returns the effective number of participants to attain the specified statistical power. You do not need to specify that n is NULL. For more details about this statistical power adjustment, see Goulet & Cousineau (2019).
Goulet, M.A. & Cousineau, D. (2019). The power of replicated measures to increase statistical power. Advances in Methods and Practices in Psychological Sciences, 2(3), 199-213. DOI:10.1177/2515245919849434
1 2 3 4 5 6 7 8 9 10 11 | # Calculating the effective sample size required for a one proporition.
# Intra-class correlation is .6 and number of replicated measurements is 5.
RM.pwr.p.test(
h = .5, # Want to detect a Cohen's h of .5
sig.level = .01,
power = .80,
alternative = "two.sided",
corr = .6,
m = 5
)
|
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