Having trouble to use the plyr package and working with lists

I'm having trouble to understand the usage of the plyr package. I try to use it to split up dataframes that a stored in a list, apply a function, store the results as dataframes and combine the dataframes again as a list. So given the follwing data:

``````    #create test dfs
df1<-data.frame(a=sample(1:50,10),b=sample(1:50,10),c=sample(1:50,10),d=(c("a","b","c","a","a","b","b","a","c","d")))
df2<-data.frame(a=sample(1:50,9),b=sample(1:50,9),c=sample(1:50,9),d=(c("e","f","g","e","e","f","f","e","g")))
df3<-data.frame(a=sample(1:50,8),b=sample(1:50,8),c=sample(1:50,8),d=(c("h","i","j","h","h","i","i","h")))

#make them a list
list.1<-list(df1=df1,df2=df2,df3=df3)
``````

I would like to calculate the mean of each group defined in d of each dataframe. If I'd use plyr only on one dataframe (to calculate the mean by a specific column by groups) a possibility to use the plyr package would be:

``````    ddply(df1,.(d),summarise, mean=mean(a))
``````

but how do I apply it on every column within the dataframe and on every dataframe within the list? and how can I reassamble all the data so that in the end I get a list with matrizes cotaining the results? Sorry for this very basic question, but I'm new to R and I have really been trying to solve this for quite some time... thx.

-

Here is a solution combining `llply()` and `ddply()`. First, `llply()` will apply function to each element of list and will return a list. Then `ddply()` is applied to each data frame of list and also divides each data frame according to column `d`. Function `colMeans()` is used to calculate mean value for each numeric column.

``````llply(list.1,function(x) ddply(x,.(d),function(x) colMeans(x[,1:3])))
\$df1
d        a     b        c
1 a 22.25000 26.25 34.25000
2 b 19.66667 22.00 28.66667
3 c 37.00000 44.50 18.00000
4 d 17.00000  3.00  4.00000

\$df2
d        a        b    c
1 e 20.50000 32.25000 18.5
2 f 25.33333 34.33333 21.0
3 g 20.50000 26.50000 16.5

\$df3
d    a        b        c
1 h 17.5 26.50000 37.25000
2 i 45.0 22.33333 26.33333
3 j 25.0 33.00000 42.00000
``````
-
perfect and easy to use. that was what i was thinking about but I dind't know how to name the object inside ddply. like this it works now! thank you. – Joschi Jan 21 '13 at 14:18

You need to put all the data into one big `data.frame`:

``````library(reshape)

big_dataframe = ldply(list.1, function(x) melt(x, id.vars = "d"))
.id d variable value
1 df1 a        a    44
2 df1 b        a    17
3 df1 c        a    15
4 df1 a        a    30
5 df1 a        a    49
6 df1 b        a    33
``````

...and then use `ddply` on it.

``````res = ddply(big_dataframe, .(.id, d, variable), summarise, mn = mean(value))
> res
.id d variable       mn
1  df1 a        a 40.00000
2  df1 a        b 25.25000
3  df1 a        c 31.25000
4  df1 b        a 22.66667
5  df1 b        b 16.00000
6  df1 b        c 26.00000
7  df1 c        a  9.00000
8  df1 c        b 16.50000
9  df1 c        c 15.00000
10 df1 d        a 28.00000
11 df1 d        b 24.00000
12 df1 d        c 39.00000
13 df2 e        a 18.50000
14 df2 e        b 15.50000
15 df2 e        c 16.50000
16 df2 f        a 26.33333
17 df2 f        b 42.00000
18 df2 f        c 37.00000
19 df2 g        a 26.50000
20 df2 g        b 22.00000
21 df2 g        c 31.00000
22 df3 h        a 29.25000
23 df3 h        b 34.25000
24 df3 h        c 32.00000
25 df3 i        a 30.33333
26 df3 i        b 40.00000
27 df3 i        c 24.33333
28 df3 j        a 21.00000
29 df3 j        b  5.00000
30 df3 j        c 46.00000
``````

which gives the mean of each variable (`a`-`c`), per level of factor `d`, and per sub-dataframe (df1-df3).

-

you can always just `lapply` your `ddply`:

`````` lapply(list.1, function(x)   ddply(x, .(d), function(x)
data.frame(a=mean(x\$a),b=mean(x\$b),c= mean(x\$c))) )
``````

``````lapply(list.1, function(x) ddply(x,.(d),summarise, mean=mean(a)) )