# applying Paired t-test of column of two different matrix-R code

I have two matrices. I would like to apply a paired t test column by column and print the t-value, degrees of freedom, confidence interval and p value for each column. I started with the code below.

D1 and D2 are two matrices:

``````for (j in 1:n){
t.test(D1[,j],D2[,j],paired=T)
}
``````

Also, how can I print the each result from this loop?

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Does wrapping the call to `t.test` in `print` get you what you want? –  Jason Morgan Jun 30 '12 at 2:12

Here's how I'd approach the problem:

``````#Make some random data
m1 <- matrix(rnorm(100), ncol = 5)
m2 <- matrix(rnorm(100), ncol = 5)

#Define a function to run your t.test, grab the relevant stats, and put them in a data.frame
f <- function(x,y){
test <- t.test(x,y, paired=TRUE)
out <- data.frame(stat = test\$statistic,
df   = test\$parameter,
pval = test\$p.value,
conl = test\$conf.int[1],
conh = test\$conf.int[2]
)
return(out)
}

#iterate over your columns via sapply
sapply(seq(ncol(m1)), function(x) f(m1[,x], m2[,x]))
#-----
[,1]       [,2]       [,3]       [,4]       [,5]
stat -0.7317108 1.73474    -0.0658436 0.6252509  -0.6161323
df   19         19         19         19         19
pval 0.4732743  0.09898052 0.9481902  0.5392442  0.5451188
conl -1.097654  -0.1259523 -0.7284456 -0.5680937 -0.7523431
conh 0.5289878  1.345625   0.6840117  1.052094   0.4101385
``````

You may want to transpose the output since it is column major ordered.

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