0

Using the data frame

df <- data.frame(user_id = seq(50),
                 var_1 = rnorm(50),
                 var_2 = rnorm(50),
                 var_3 = rnorm(50)
)

I could, for example, simulate the null distribution for variable var_1 with the infer package

null_dist <- df %>%
        
        specify(response = var_1) %>% 
        
        hypothesize(null = "point", mu = 0) %>% 
        
        generate(reps = 10000, type = "bootstrap") %>% 
        
        calculate(stat = "mean")

and then visualize it by

null_dist %>% visualize() 

How would I apply this procedure to all 3 variables at once, for example after transforming df to df_2?

df_2 <- df %>%
        
        pivot_longer(starts_with("var_"), "variable", values_to = "values")

Thanks for your support!

0

One solution could be:

  1. Transformation of the initial data frame
df_2 <- df %>%
        
        pivot_longer(starts_with("var_"), "variable", values_to = "values")
  1. Defining a function
null_dist_func <- function(df){
        
        df %>% specify(response = values) %>%
                hypothesize(null = "point", mu = 0) %>%
                generate(reps = 1000, type = "bootstrap") %>%
                calculate(stat = "mean")
}
  1. Split-apply-combine approach
null_dist <- df_2 %>% select(-user_id) %>%
        
        split(list(.$variable)) %>%
        
        map(null_dist_func) %>% 
        
        bind_rows(.id = "variable")

Visualization of a selected null distribution

null_dist %>% filter(variable == "var_2") %>% visualize()

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