Extract data value from the output of melt in reshape2

I have a data set in the following format and want to extract data-value for each combination like A_ALL, B_ALL, A_Part, B_part for stastical analysis.

Currently, what I can do is

``````A_ALL <- data[data\$variable=="All" & data\$Set=="A",1]
A_Part <- data[data\$variable=="Part" & data\$Set=="A",1]
``````

I wonder if there is a more efficient way to extract all these data.

Thanks!

Tong Chen

**Input File format**

``````value   variable    Set
24.4003 All A
21.2582 All A
1.91043 All A
34.9642 All B
33.794  All B
16.6093 All B
16.6095 All B
24.4003 Part    A
21.2582 Part    A
34.9642 Part    B
33.794  Part    B
16.6093 Part    B
``````
-
Hi! How did the answer below work out for you? If it solved your problem, please consider upvoting and/or accepting it. If it did not, please leave a comment or edit your question to indicate to others that this problem is still unresolved. –  Ananda Mahto Mar 8 '14 at 9:21

You can use `split`, which will create a `list` of the values you're interested in:

``````with(mydf[mydf\$Set == "A", ], split(value, variable))
# \$All
# [1] 24.40030 21.25820  1.91043
#
# \$Part
# [1] 24.4003 21.2582
``````

Here, instead of splitting on the entire dataset, I'm splitting on the values where `Set == "A"`, as you've indicated you need in your current solution.

Alternatively, if you want to split according to all factors of "Set" and "variable" in one go:

``````with(mydf, split(value, list(Set, variable)))
# \$A.All
# [1] 24.40030 21.25820  1.91043
#
# \$B.All
# [1] 34.9642 33.7940 16.6093 16.6095
#
# \$A.Part
# [1] 24.4003 21.2582
#
# \$B.Part
# [1] 34.9642 33.7940 16.6093
``````

I would recommend sticking with a `list`, as I've created above. However, if you really want to have a whole bunch of objects in your workspace, you can use `list2env` to extract the list items to your environment:

``````## I currently only have the original data.frame
ls()
# [1] "mydf"
list2env(with(mydf, split(value, list(Set, variable))), envir=.GlobalEnv)
# <environment: R_GlobalEnv>
ls()
# [1] "A.All"  "A.Part" "B.All"  "B.Part" "mydf"
A.All
# [1] 24.40030 21.25820  1.91043
A.Part
# [1] 24.4003 21.2582
B.All
# [1] 34.9642 33.7940 16.6093 16.6095
B.Part
# [1] 34.9642 33.7940 16.6093
``````
-