I once read the following R function for computing confidence interval
# set number of simulated data sets and sample size # mu is the mean for the normal S <- 1000 n <- 15 mu <- 1
coverage of usual confidence interval based on sample mean is computed as follows. Here,
sampmean.ses denotes the standard error for sample mean. I can mostly guess the logic behind this. What confuses me is about the way that R implements this, in specific, what does
outsampmean-t05*sampmean.ses <= mu intend to do? Looks like sum is to count all of the discrete points satisfying these two conditions.
t05 <- qt(0.975,n-1) coverage <- sum((outsampmean-t05*sampmean.ses <= mu) & (outsampmean+t05*sampmean.ses >= mu))/S