# Reshape matrix into a list of lists

I have a list as follows:

`````` id | value
----------
4     600
4     899
7      19
13    4930
13     300
:       :
``````

There are multiple ID repeats, and each one has a unique value. I want to turn this into something as follows:

``````id |  list
----------
4    c(600, 899)
7    c(19)
13    c(4930, 300)
:    :
``````

Is there a vectorized method of accomplishing this?

EDIT: Extending the first question, is there a simple way to do the same thing for a generic MxN matrix? I.e., turning this:

`````` id | value1  value2
-------------------
4     600        a
4     899        b
7      19        d
13    4930        e
13     300        a
:       :        :
``````

into this:

``````id |  list
----------
4    list(c(600, 899),c('a','b'))
7    list(c(19),c('b'))
13    list(c(4930, 300),c('e','a'))
:    :
``````

Thanks!

-

You could also use `tapply` if you want to stick with base functions:

``````tapply(dat\$value,dat\$id,c)
\$`4`
[1] 600 899

\$`7`
[1] 19

\$`13`
[1] 4930  300
``````

Edit:

For your edited problem, I would go with `split` and `lapply`:

``````x <- lapply(split(dat[2:3],dat\$id),c,use.names=F)

dput(x)
structure(list(`4` = list(c(600, 899), c("a", "b")), `7` = list(
19, "d"), `13` = list(c(4930, 300), c("e", "a"))), .Names = c("4", "7", "13"))
``````
-
@Andrie - I updated the question to include a more generic question, do you mind taking a second look? –  eykanal Feb 8 '12 at 16:13

The functions in package `plyr` should be of help here.

In the following example I assume your data is in the form of a `data.frame` - even if it really is a list, as you say, it should be straight-forward to convert to a data.frame:

``````dat <-   data.frame(
id = c(4, 4, 7, 13, 13),
value = c(600, 899, 19, 4930, 300)
)

library(plyr)
dlply(dat, .(id), function(x)x\$value)
``````

The result is a list as you specified:

``````\$`4`
[1] 600 899

\$`7`
[1] 19

\$`13`
[1] 4930  300

attr(,"split_type")
[1] "data.frame"
attr(,"split_labels")
id
1  4
2  7
3 13
``````
-
Thanks for answering. The data is in a `data.frame`, I'm still getting used to R terminology. I'll try this out. –  eykanal Feb 8 '12 at 14:41

I'd just `split()` the data:

``````d <- read.table(text = "id  value
4     600
4     899
7      19
13    4930