1 Why is multiple testing a problem?
a vector, x, of length 1000. The rst 900 entries are random numbers with a standard normal distribution. The last 100 are random numbers from a normal distribution with mean 3 and sd 1. Note that I didn’t need to indicated the sd of 1 in the second bit; it’s the default value.
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