Count in several dimensions

Is there a function maybe table or xtabs to count data Titanic in the following way:

I do not need the seperation into "Class" like

``````df<-data.frame(Titanic)
tapply(df\$Freq,list(df\$Sex,df\$Age,df\$Survived),sum)
``````

but the output should look like: "new_output"=

``````1               board_Crew             board_Crew_Male 862
2               board_Crew           board_Crew_Female  23
3          board_Crew_Male       board_Crew_Male_Child   0
4        board_Crew_Female     board_Crew_Female_Child   0
5          board_Crew_Male       board_Crew_Male_Adult 862
6        board_Crew_Female     board_Crew_Female_Adult  23
7    board_Crew_Male_Child    board_Crew_Male_Child_No   0
8  board_Crew_Female_Child  board_Crew_Female_Child_No   0
11   board_Crew_Male_Child   board_Crew_Male_Child_Yes   0
12 board_Crew_Female_Child board_Crew_Female_Child_Yes   0
``````

because on this last data I could build a graph

``````g <- graph.data.frame(new_output, directed=TRUE)
plot(g,layout=layout.reingold.tilford(g,root=1),edge.arrow.size=0.5)
``````

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What do you mean with `board_Crew`? –  Ferdinand.kraft Aug 16 '13 at 13:34
I mean all people the sum of Crew, Class 1, Class 2 and Class 3. –  Klaus Aug 16 '13 at 13:43
Really? then check your quantitatives, as they match my answer with non-Crew people removed. –  Ferdinand.kraft Aug 16 '13 at 13:55

Maybe you are looking for this:

``````df_Crew <- df[df\$Class=="Crew",]
L <- lapply(1:4, function(i) aggregate(df_Crew\$Freq, by=df_Crew[1:i], sum))
L2 <- lapply(L, function(d) data.frame(group=do.call(paste, c(as.list(d[names(d)!="x"]), sep="_")), freq=d\$x))
Reduce(rbind, L2)
``````

Result:

``````                   group freq
1                   Crew  885
2              Crew_Male  862
3            Crew_Female   23
4        Crew_Male_Child    0
5      Crew_Female_Child    0
8     Crew_Male_Child_No    0
9   Crew_Female_Child_No    0
12   Crew_Male_Child_Yes    0
13 Crew_Female_Child_Yes    0
``````
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I see how you would start to build a data frame that I am looking for. But what I suggest is more generally. You see I would count the data by factors and like to have a formated result to build a tree. This tree is similar to a dicision tree (pkg "party" ctree). The solution which I want to sorted out is: 1) find the right function, which can clustering the data like you do above and 2) build nice trees and statistical trees on it. –  Klaus Aug 17 '13 at 11:55

Here's an option using `plyr`

``````library(plyr)
margins <- Reduce(c,names(df)[1:4],accumulate=T)

ldply(margins, function(x) ddply(df,x,summarise,count=sum(Freq)))
Class count    Sex   Age Survived
1    1st   325   <NA>  <NA>     <NA>
2    2nd   285   <NA>  <NA>     <NA>
3    3rd   706   <NA>  <NA>     <NA>
4   Crew   885   <NA>  <NA>     <NA>
5    1st   180   Male  <NA>     <NA>
6    1st   145 Female  <NA>     <NA>
7    2nd   179   Male  <NA>     <NA>
8    2nd   106 Female  <NA>     <NA>
9    3rd   510   Male  <NA>     <NA>
10   3rd   196 Female  <NA>     <NA>
11  Crew   862   Male  <NA>     <NA>
12  Crew    23 Female  <NA>     <NA>
13   1st     5   Male Child     <NA>
14   1st   175   Male Adult     <NA>
15   1st     1 Female Child     <NA>
16   1st   144 Female Adult     <NA>
17   2nd    11   Male Child     <NA>
18   2nd   168   Male Adult     <NA>
19   2nd    13 Female Child     <NA>
20   2nd    93 Female Adult     <NA>
21   3rd    48   Male Child     <NA>
22   3rd   462   Male Adult     <NA>
23   3rd    31 Female Child     <NA>
24   3rd   165 Female Adult     <NA>
25  Crew     0   Male Child     <NA>
26  Crew   862   Male Adult     <NA>
27  Crew     0 Female Child     <NA>
28  Crew    23 Female Adult     <NA>
29   1st     0   Male Child       No
30   1st     5   Male Child      Yes
31   1st   118   Male Adult       No
32   1st    57   Male Adult      Yes
33   1st     0 Female Child       No
34   1st     1 Female Child      Yes
35   1st     4 Female Adult       No
36   1st   140 Female Adult      Yes
37   2nd     0   Male Child       No
38   2nd    11   Male Child      Yes
39   2nd   154   Male Adult       No
40   2nd    14   Male Adult      Yes
41   2nd     0 Female Child       No
42   2nd    13 Female Child      Yes
43   2nd    13 Female Adult       No
44   2nd    80 Female Adult      Yes
45   3rd    35   Male Child       No
46   3rd    13   Male Child      Yes
47   3rd   387   Male Adult       No
48   3rd    75   Male Adult      Yes
49   3rd    17 Female Child       No
50   3rd    14 Female Child      Yes
51   3rd    89 Female Adult       No
52   3rd    76 Female Adult      Yes
53  Crew     0   Male Child       No
54  Crew     0   Male Child      Yes
55  Crew   670   Male Adult       No
56  Crew   192   Male Adult      Yes
57  Crew     0 Female Child       No
58  Crew     0 Female Child      Yes
59  Crew     3 Female Adult       No
60  Crew    20 Female Adult      Yes
``````
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