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Suppose I have an object called v, how do I find out its container type (a vector, a list, a matrix, etc.), without trying each of the is.vector(v), is.list(v) ... ?

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mode() provides some insight into this, though it will not differentiate AFAIK between data.frame() and list() or vector() and matrix(). A data.frame() IS a special type of list() and a matrix() is simply a vector() with some dim attributes. Depending on what you need to do, you could always check out some source code to see how other authors have addressed this issue. –  Chase Jul 24 '12 at 3:36
Thank you! So would it be correct to say that matrix is a child class of vector, and data.frame is a child class of list? And so that casting types like as.matrix(i.am.a.vector) has negligible cost? –  caoy Jul 24 '12 at 3:49
@acai - I'll defer to others for the proper hierarchy of object classes, but what typed seems mostly reasonable. In my experience, coercing items via as.matrix() and friends is in fact pretty negligible in the grand scheme of things...i.e. whenever I've had a function that was long enough to worry about system.time() and Rprof(), as.matrix() et al was taking up a small part of the time. –  Chase Jul 24 '12 at 3:52

1 Answer 1

up vote 5 down vote accepted

There are three functions which will be helpful for you: mode, str and class

First, let's make some data:

nlist <- list(a=c(1,2,3), b=c("a", "b", "c"), c=matrix(rnorm(10),5))
ndata.frame <- data.frame(a=c("a", "b", "c"), b=1:3)
ncharvec <- c("a", "b", "c")
nnumvec <- c(1, 2, 3)
nintvec <- 1:3

So let's use the functions I mentioned above:

[1] "list"

List of 3
 $ a: num [1:3] 1 2 3
 $ b: chr [1:3] "a" "b" "c"
 $ c: num [1:5, 1:2] -0.9469 -0.0602 -0.3601 0.9594 -0.4348 ...

[1] "list"

Now for the data frame:

[1] "list"

This may surprise, you but data frames are simply a list with a data.frame class attribute.

'data.frame':   3 obs. of  2 variables:
 $ a: Factor w/ 3 levels "a","b","c": 1 2 3
 $ b: int  1 2 3
[1] "data.frame"

Note that there are different modes of vectors:

[1] "character"
[1] "numeric"
[1] "numeric"

Also see that although nnumvec and nintvec appear identical, they are quite different:

 num [1:3] 1 2 3
 int [1:3] 1 2 3

[1] "numeric"
[1] "integer"

Depending on which of these you want should determine what function you use. str is a generally good function to look at variables whereas the other two are more useful in functions.

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