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In R I have the following matrix (each row represents a bootstrap 95% confidence interval generated from the same sample data):

       low   high
[1,]   22.2  25.5
[2,]   23.1  25.9
[3,]   23.4  26.1
...

I know the true population mean of the data, it's 23.3. So the first two include the true mean but the third does not.

In R, I want to run a for loop i through nrow(matrix) times, each i checking whether or not the true population mean of the data is in that particular interval, then return a column vector of height nrow(matrix) of TRUE if the interval contains the true mean, and FALSE otherwise.

How could I do this?

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2 Answers 2

up vote 6 down vote accepted

You can simply use the inequality operators directly on the matrix columns. So I would have simply done:

> cbind( mat[,1] <= 23.3 & mat[,2] >= 23.3 )

      [,1]
[1,]  TRUE
[2,]  TRUE
[3,] FALSE
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1  
+1 -- instead of cbind, you can also have drop = FALSE inside [ –  flodel Mar 24 '12 at 23:36
 mat <- matrix(c(22.2,  25.5,
    23.1 , 25.9,
    23.4,  26.1), ncol=2, byrow=TRUE)
 trueval <- 23.3
 apply(mat, 1, findInterval, x=trueval)
#[1] 1 1 0
 which( apply(mat, 1, findInterval, x=trueval) == 1)
#[1] 1 2
  apply(mat, 1, findInterval, x=trueval) == 1
#[1]  TRUE  TRUE FALSE
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