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I'm trying to put some matrices in a dataframe in R, something like :

m <- matrix(c(1,2,3,4), nrow=2, ncol=2)
df <- data.frame(id=1, mat=m)

But when I do that, I get a dataframe with 2 rows and 3 columns instead of a dataframe with 1 row and 2 columns.

Reading the documentation, I have to escape my matrix using I().

df <- data.frame(id=1, mat=I(m))

'data.frame':   2 obs. of  2 variables:
 $ id : num  1 1
 $ mat: AsIs [1:2, 1:2] 1 2 3 4

As I understand it, the dataframe contains one row for each row of the matrix, and the mat field is a list of matrix column values.

Thus, how can I obtain a dataframe containing matrices ?

Thanks !

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Despite my answer, I have some sympathy with the other respondent: why do you want to do this? Perhaps we can help you find a better R idiom for doing it ... –  Ben Bolker May 26 '11 at 22:20
I have data with inputs and outputs being matrices. I wanted each experience to be a row of a dataframe. –  Scharron May 27 '11 at 10:13

3 Answers 3

up vote 3 down vote accepted

I find data.frames containing matrices mind-bendingly weird, but: the only way I know to achieve this is hidden in stats:::simulate.lm

Try this, poke through and see what's happening:

d <- data.frame(y=1:5,n=5)
g0 <- glm(cbind(y,n-y)~1,data=d,family=binomial)
s <- simulate(g0,n=5)

This is the weird, back-door solution. Create a list, change its class to data.frame, and then (this is required) set the names and row.names manually (if you don't do those final steps the data will still be in the object, but it will print out as though it had zero rows ...)

m1 <- matrix(1:10,ncol=2)
m2 <- matrix(5:14,ncol=2)
dd <- list(m1,m2)
class(dd) <- "data.frame"
names(dd) <- LETTERS[1:2]
row.names(dd) <- 1:5
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The result you got (2 rows x 3 columns) is what is to be expected from R, as it amounts to cbind a vector (id, with recycling) and a matrix (m).

IMO, it would be better to use list or array (when dimensions agree, no mix of numeric and factors values allowed), if you really want to bind different data structures. Otherwise, just cbind your matrix to an existing data.frame if both have the same number of rows will do the job. For example

x1 <- replicate(2, rnorm(10))
x2 <- replicate(2, rnorm(10))
x12l <- list(x1=x1, x2=x2)
x12a <- array(rbind(x1, x2), dim=c(10,2,2))

and the results reads

> str(x12l)
List of 2
 $ x1: num [1:10, 1:2] -0.326 0.552 -0.675 0.214 0.311 ...
 $ x2: num [1:10, 1:2] -0.164 0.709 -0.268 -1.464 0.744 ...
> str(x12a)
 num [1:10, 1:2, 1:2] -0.326 0.552 -0.675 0.214 0.311 ...

Lists are easier to use if you plan to use matrix of varying dimensions, and providing they are organized in the same way (for rows) as an external data.frame you can subset them as easily. Here is an example:

df1 <- data.frame(grp=gl(2, 5, labels=LETTERS[1:2]), 
                  age=sample(seq(25,35), 10, rep=T))
with(df1, tapply(x12l$x1[,1], list(grp, age), mean))

You can also use lapply (for list) and apply (for array) functions.

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A much easier way to do this is to define the data frame with a placeholder for the matrix

m <- matrix(c(1, 2, 3, 4), nrow = 2, ncol = 2) 
df <- data.frame(id = 1, mat = rep(0, nrow(m)))

Then to assign the matrix. No need to play with the class of a list or to use an *apply() function.

df$mat <- m
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