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@steveharoz
Last active October 14, 2021 12:58
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power analysis for within-subject, high-repetition experiment
library(tidyverse)
library(magrittr)
library(afex)
library(Superpower)
set.seed(555)
SUBJECT_COUNT = 3 # per between-subject condition
#### ground-truth parameters for 3w x 2w x 2b (100 repetitions)
# get every combination of subjectID, within-subject conditions, and trial repetitions
data = expand.grid(
subjectID = rnorm(SUBJECT_COUNT), # individual differences
color = c(-1, 0, 1),
number = c(-1, 1),
shape = 1,
trial_index = 1:100
)
# repeat for the second between subject condition (shape=2)
data = data %>% bind_rows(
expand.grid(
subjectID = rnorm(SUBJECT_COUNT), # individual differences
color = c(-1, 0, 1),
number = c(-1, 1),
shape = 2,
trial_index = 1:100
))
#### simulate experiment
data = data %>%
# generate responses with color*number interaction with individual differences
mutate(response = color * number * (15+subjectID*5)) %>%
# add trial noise
mutate(response = response + rnorm(n(), subjectID, 3)) %>%
# condition labels
mutate(
subjectID=factor(subjectID, labels = paste("Subject", 1:length(unique(subjectID)))),
color=factor(color, labels = c("red", "purple", "blue")),
number=factor(number, labels = c("one", "three")),
shape=factor(shape, labels = c("circle", "square")))
#### preview the data
ggplot(data) +
aes(x=response, fill=color) +
geom_density() +
scale_fill_identity() +
facet_grid(shape * subjectID ~ number)
#### anova to get partial eta squared (pes)
f_table = afex::aov_ez(
id="subjectID",
dv="response",
data,
within=c("color", "number"),
between="shape",
anova_table = list(correction="none", es = "pes")) %>%
# use pes to calculate cohen's f
`$`('anova_table') %>%
mutate(cohens_f = sqrt(pes/(1-pes))) %>%
# why are the row names so hard to access?
as.data.frame() %>%
rownames_to_column("effect") %T>%
print()
#### power analysis
f_table %>%
filter(effect == "color:number") %$% # fancy pipe
Superpower::power.ftest(`num Df`, `den Df`, cohens_f)
 Power Calculation for F-test 

     num_df = 2
     den_df = 8
    cohen_f = 2.888124
alpha_level = 0.05
 beta_level = 1.505091e-05
      power = 99.99849

image

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