# create a scoring matrix from two dataframes

I am trying to compare sets of variables(`X`) that are stored in two dataframes (`foo`, `bar`). Each `X` is a unique independent variable that has up to 10 values of `Y` associated with it. I would like to compare every foo.X with every bar.X by comparing the number of `Y` values they have in common - so the output could be a matrix with axes of foo.x by bar.x in length.

this simple example of foo and bar would want to return a 2x2 matrix comparing a,b with c,d:

``````foo <- data.frame(x= c('a', 'a', 'a', 'b', 'b', 'b'), y=c('ab', 'ac', 'ad', 'ae', 'fx', 'fy'))
bar <- data.frame(x= c('c', 'c', 'c', 'd', 'd', 'd'), y=c('ab', 'xy', 'xz', 'xy', 'fx', 'xz'))
``````

EDIT:

I've left the following code for other newbies to learn from (for loops are effectvie but probably very suboptimal), but the two solutions below are effective. In particular Ramnath's use of data.table is very effective when dealing with very large dataframes.

store the dataframes as lists where the values of y are stored using the `stack` function

``````foo.list <- dlply(foo, .(x), function(x) stack(x, select = y))
bar.list <- dlply(bar, .(x),function(x)  stack(x, select = y))
``````

write a function for comparing membership in the two stacked lists

``````comparelists <- function(list1, list2) {
for (i in list1){
for (j in list2){
count <- 0
if (i[[1]] %in% j[[1]]) count <- count + 1
}
}
return count
}
``````

write an output matrix

``````output.matrix <- matrix(1:length(foo.list), 1:length(bar.list))
for (i in foo.list){
for (j in bar.list){
output.matrix[i,j] <- comparelists(i,j)

}
``````

}

-

Here is a simpler approach using `merge`

``````library(reshape2)
df1 <- merge(foo, bar, by = 'y')
dcast(df1, x.x ~ x.y, length)

x.x c d
1   a 1 0
2   b 0 1
``````

EDIT. The merge can be faster using `data.table`. Here is the code

``````foo_dt <- data.table(foo, key = 'y')
bar_dt <- data.table(bar, key = 'y')
df1 <- bar_dt[foo_dt, nomatch = 0]
``````
-
thanks @ramnath - this is indeed a very elegant and easy solution. Unfortunately this guy also crashes my computer when I apply it to the entire dataset. I think i am going to to return to my pre-R strategy of using python for processing my data (i iterate through the data and write the results to a file so the computer doesn't flip out) and then use R for its graphing capabilites. –  zach Jan 7 '12 at 18:00
how big are `foo` and `bar` and how many levels do they contain? –  Ramnath Jan 7 '12 at 18:03
check my edit. it uses `data.table` to do the `merge` and hence is very efficient. can you check if this works for you? i am trying to figure out an efficient way to `cast` the data, if that step is the bottleneck. –  Ramnath Jan 7 '12 at 18:13
wow. using datatable is WAY faster. My `foo` and `bar` are about 55k and 1.5M in length. I haven't tried casting on the full length dataframe yet since I think there may be something funny in the way the dables are joining. –  zach Jan 7 '12 at 19:01
data.table is AWESOME! dcast of the resulting table is pretty quick and now I can focus on casting/splitting/subsetting to my heart's content. Thank you for taking the time to show me this method. I am always impressed by the Stack Overflow community! –  zach Jan 7 '12 at 19:48

There must be a hundred ways to do this; here is one that feels relatively straightforward to me:

``````library(reshape2)
foo <- data.frame(x = c('a', 'a', 'a', 'b', 'b', 'b'),
y = c('ab', 'ac', 'ad', 'ae', 'fx', 'fy'))
bar <- data.frame(x = c('c', 'c', 'c', 'd', 'd', 'd'),
y = c('ab', 'xy', 'xz', 'xy', 'fx', 'xz'))

# Create a function that counts the number of common elements in two groups
nShared <- function(A, B) {
length(intersect(with(foo, y[x==A]), with(bar, y[x==B])))
}

# Enumerate all combinations of groups in foo and bar
(combos <- expand.grid(foo.x=unique(foo\$x), bar.x=unique(bar\$x)))
#   foo.x bar.x
# 1     a     c
# 2     b     c
# 3     a     d
# 4     b     d

# Find number of elements in common among all pairs of groups
combos\$n <- mapply(nShared, A=combos\$foo.x, B=combos\$bar.x)

# Reshape results into matrix form
dcast(combos, foo.x ~ bar.x)
#   foo.x c d
# 1     a 1 0
# 2     b 0 1
``````
-
nice! I see you expand to a large grid, count the overlaps and then recast. Elegant. But what if foo and bar are actually thousands of members long? Would you change your method? –  zach Jan 5 '12 at 21:21
I wouldn't change it unless the calculation was really slowing down. But I think this should scale pretty well to larger data sets. –  Josh O'Brien Jan 5 '12 at 21:43
thanks Josh. i'm new enough in R not to have used intersect, expand.grid, dcast or mapply - so in addition to being a quick answer this is a real help! –  zach Jan 5 '12 at 21:50
after the combos <- expand() line i do not get the output you show. I get: [1] bar.x <0 rows> (or 0-length row.names) . I face a similar problem when using my true dataset. –  zach Jan 5 '12 at 22:47
The columns of your data.frames were probably of class `character` rather than `factor`, and so `levels()` didn't work, with them. I've edited the answer, replacing `levels()` with `unique()`. It should now should work with both character and factor columns. –  Josh O'Brien Jan 5 '12 at 22:55