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Analytic power analysis for correlations (Pearson's r) at different sample sizes
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library(tidyverse) | |
library(pwr) | |
power_correlation <- function(n, r, alpha=0.05) { | |
power <- pwr.r.test(n=n, r=r, sig.level=alpha) | |
data.frame(n=n, r=r, alpha=alpha, power=power$power) | |
} | |
parameters <- expand.grid(n = seq.int(4, 200, by=2), | |
r = seq.int(.1, .9, by=.1)) | |
results <- pmap_dfr(parameters, power_correlation) | |
results %>% | |
ggplot(aes(n, power, group=r, color=as.factor(r))) + | |
geom_line() + | |
guides(color = guide_legend(reverse=TRUE)) + | |
labs(title = "Power for different sample sizes and correlations", | |
x = "Sample size", | |
y = NULL, | |
color = "Pearson's r") |
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