15.2: Simulating the Maximum Finishing Time
- Page ID
- 8800
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Let’s simulate 150 samples, collecting the maximum value from each sample, and then plotting the distribution of maxima.
# sample maximum value 5000 times and compute 99th percentile
nRuns <- 5000
sampSize <- 150
sampleMax <- function(sampSize = 150) {
samp <- rnorm(sampSize, mean = 5, sd = 1)
return(tibble(max=max(samp)))
}
input_df <- tibble(id=seq(nRuns)) %>%
group_by(id)
maxTime <- input_df %>% do(sampleMax())
cutoff <- quantile(maxTime$max, 0.99)
ggplot(maxTime,aes(max)) +
geom_histogram(bins = 100) +
geom_vline(xintercept = cutoff, color = "red")