# Proper use of use of “cor” function in R

I am interested to know what a proper x (vector matrix or data frame) input looks like. I am currently using the function in two different sorts of matrices. However, I am not sure how R would interpret my data the way I intend. I will explain the types of matrix by example.

Type 1

``````           Gene1 Gene2 Gene3
sample1
sample2
``````

Type 2

``````          Sample1 Sample2 Sample3
gene 1
gene 2
gene 3
``````

Are either of these formats valid x parameters? I input both of types of matrices and get some results, but without knowing whether or not this a proper use the function, these are just random numbers. Thank you for your time. I apologize that this isn't more interesting.

-

When `X` is a matrix, `cor(X)` will produce a square correlation matrix with the number of rows and columns equal to the number of columns in the original matrix. In other words, `cor` produces correlations between the columns in the matrix. Here is a simple example:

``````> x <- rnorm(5)
> y <- rnorm(5)
> cbind(x,y)
x        y
[1,]  1.67287  1.70663
[2,] -1.23120  0.56948
[3,]  0.67538 -0.20596
[4,] -1.21077  0.11648
[5,]  0.60409  1.15405

> cor(cbind(x,y))
x       y
x 1.00000 0.56329
y 0.56329 1.00000
``````

@order Try out `rbind`; it should return, in the case of the example above, a 5-by-5 matrix of 1 and -1. Certainly not what you are looking for. –  Jason Morgan Jun 24 '12 at 14:30