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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.

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up vote 1 down vote accepted

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
share|improve this answer
    
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"))
> head(big_dataframe)
  .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).

share|improve this answer

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))) )

or using your code exactly:

lapply(list.1, function(x) ddply(x,.(d),summarise, mean=mean(a)) )
share|improve this answer
    
Thank you. thats what i was thinking about but I dind't know how to name the object within ddply. it all makes sense now with the inside function...I think the first code misses an ) at the end. it works fine but I'll have to index manually all columns. the downer code returns only the means for a. – Joschi Jan 21 '13 at 14:16

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