Here is some sample data on my problem:
mydf <- data.frame(A = rnorm(20, 1, 5), B = rnorm(20, 2, 5), C = rnorm(20, 3, 5), D = rnorm(20, 4, 5), E = rnorm(20, 5, 5))
Now I'd like to run a one-sample t-test on each column of the data.frame, to prove if it differs significantly from zero, like
t.test(mydf$A), and then store the mean of each column, the t-value and the p-value in a new data.frame. So the result should look something like this:
A B C D E mean x x x x x t x x x x x p x x x x x
I could definitely think of some tedious ways to do this, like looping through
mydf, calculating the parameters, and then looping through the new data.frame and insert the values.
But with packages like
plyr at hand, shouldn't there be a more concise and elegant way to do this?
Any ideas are highly appreciated.