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# Calculating count and proportion of a certain value for a number of variables subsetted by other variables

I've got a `data.table` that looks like this:

``````DT <- data.table(Feature1 = c("yes", "yes", "yes", "no", "no"),
Feature2 = c("yes", "yes", "yes", "yes", "no"),
Feature3 = c("yes", "yes", "yes", "yes", "no"),
Var1 = c("yes", "yes", "no", "yes", "no"),
Var2 = c("yes", "yes", "yes", "yes", "yes"))

DT

##   Feature1 Feature2 Feature3 Var1 Var2
##1:       no       no       no   no  yes
##2:       no      yes      yes  yes  yes
##3:      yes      yes      yes  yes  yes
##4:      yes      yes      yes  yes  yes
##5:      yes      yes      yes   no  yes
``````

Now I'd like to count the occurrence and the proportion of "Var1" being "yes" for all possible combinations of the features, "Var2" being "yes" by these combinations etc. I need a count as well as the proportion of "yes"-answers again by each combination.

Getting count for one variable is easy. As I don't want to drop any combinations, I use `CJ` rather than `by`:

``````DT[,`:=`(Feature1 = as.factor(Feature1),
Feature2 = as.factor(Feature2),
Feature3 = as.factor(Feature3))]
``````

(Btw, is there a nicer way to set a number of columns as factors at once?)

``````setkeyv(DT, c("Feature1", "Feature2", "Feature3", "Var1"))
DT2 <- DT[CJ(levels(Feature1), levels(Feature2), levels(Feature3), "yes"),
list(Var1.count = .N)]
DT2[, Var1 := NULL]
``````

However, using `CJ` means that I have to set a new key for each variable. What if I have 100 of them? Is there a nicer way to do this rather than setting up a `for`-loop? Also, how do I get the proportions out of here? E.g., for the combination of features "yes, yes, yes", Var1 is "yes" twice and "no" once, so I'd like to get another column called `Var1.prop` with the value 0.66 in the corresponding row.

In essence, this is what I aim for:

``````   Feature1 Feature2 Feature3 Var1 Var1.count Var1.prop Var2.count Var2.prop
1:       no       no       no  yes          0        NA         1        1.00
2:       no       no      yes  yes          0        NA         0        NA
3:       no      yes       no  yes          0        NA         0        NA
4:       no      yes      yes  yes          1        1.00       1        1.00
5:      yes       no       no  yes          0        NA         0        NA
6:      yes       no      yes  yes          0        NA         0        NA
7:      yes      yes       no  yes          0        NA         0        NA
8:      yes      yes      yes  yes          2        0.66       3        1.00
``````

The solution should be scalable for a high number of varying features and variables. I prefer using `data.table` because it's much faster than normal `data.frame` operations and because I found it to be easier to use in functions compared to `dplyr`. Having said that, I would also accept a neat and not too inefficient solution with `data.frame`.

Update after @Arun's answer. That's really neat, but it isn't well extensible to, let's say, 100 variables. I've been trying to build upon Arun's answer this way, but it only returns an empty `data.table` along with a warning:

``````vars <- c("Var1", "Var2")
tmps <- paste0(vars, ".tmp")

ans <- DTn[, { for (var in vars){
assign(paste0(var, ".tmp"), sum(var == "yes", na.rm = TRUE));
list(assign(paste0(var, ".count"), get(paste0(var, ".tmp"))),
assign(paste0(var, ".prop"), get(paste0(var, ".tmp"))/.N)
)
}}, by = key(DT), with = FALSE]
``````

What's going wrong here?

-

You don't have to convert columns to `factors`. In fact, `data.table` recommends avoiding factors wherever possible, as it'll also improve speed. However, I'll illustrate how you can convert to `factor` much more easily for the future.

``````sd_cols = c("Feature1", "Feature2", "Feature3")
DT[, c(sd_cols) := lapply(.SD, as.factor), .SDcols=sd_cols]
``````

Okay, now on to the solution. Of course we'll need to use `CJ` here because you need to get absent combinations as well. So, we've to generate that first.

``````uvals = c("no", "yes")
setkey(DT, Feature1, Feature2, Feature3)
DTn = DT[CJ(uvals, uvals, uvals), allow.cartesian=TRUE]
``````

The `allow.cartesian=TRUE` is necessary because the join will result in more rows than `max(nrow(x), nrow(i))` in a join `x[i]`. Read this post for more on `allow.cartesian`.

Now that we've all the combinations, we can group/aggregate them to obtain the results in the fashion you require.

``````ans = DTn[, { tmp1 = sum(Var1 == "yes", na.rm=TRUE);
tmp2 = sum(Var2 == "yes", na.rm=TRUE);
list(Var1.count = tmp1,
Var1.prop  = tmp1/.N,
Var2.count = tmp2,
Var2.prop  = tmp2/.N * 100)
}, by=key(DT)]

#    Feature1 Feature2 Feature3 Var1.count Var1.prop Var2.count Var2.prop
# 1:       no       no       no          0 0.0000000          1         1
# 2:       no       no      yes          0 0.0000000          0         0
# 3:       no      yes       no          0 0.0000000          0         0
# 4:       no      yes      yes          1 1.0000000          1         1
# 5:      yes       no       no          0 0.0000000          0         0
# 6:      yes       no      yes          0 0.0000000          0         0
# 7:      yes      yes       no          0 0.0000000          0         0
# 8:      yes      yes      yes          2 0.6666667          3         1
``````

I think you can play around to get the values as NA instead of 0, if that's really that important?

Following OP's question under comment + edit, after getting `DTn`:

``````vars = c("Var1", "Var2")
ans = DTn[, c(N=.N, lapply(.SD, function(x) sum(x=="yes", na.rm=TRUE))),
by=key(DTn), .SDcols=vars]
N = ans\$N
ans[, N := NULL]
ans[, c(paste(vars, "prop", sep=".")) := .SD/N, .SDcols=vars]
setnames(ans, vars, paste(vars, "count", sep="."))

ans
#    Feature1 Feature2 Feature3 Var1.count Var2.count Var1.prop Var2.prop
# 1:       no       no       no          0          1 0.0000000         1
# 2:       no       no      yes          0          0 0.0000000         0
# 3:       no      yes       no          0          0 0.0000000         0
# 4:       no      yes      yes          1          1 1.0000000         1
# 5:      yes       no       no          0          0 0.0000000         0
# 6:      yes       no      yes          0          0 0.0000000         0
# 7:      yes      yes       no          0          0 0.0000000         0
# 8:      yes      yes      yes          2          3 0.6666667         1
``````

I really don't know how else to explain. `vars = c("a", "b", "c"); DT[, vars := "bla"]`. Here, I've a variable `vars` defined, but what if I don't want to create columns `a,b,c`, but create a column named `vars`. It shouldn't evaluate by default and it's not an error as this is perfectly valid. If you feel strongly about this, please start a discussion on the mailing list with a reference to this post. – Arun May 30 '14 at 9:53
Ok, now I got what you mean. When I type `DT[, sd_cols := lapply(.SD, log), .SDcols=sd_cols]`, it tries to create a new column called `sd_cols` but gets a list of a couple of vectors with length = number of rows of the whole table. It then tries to assign to each entry of the new column one list element (huge vector), but that whole thing gets too large and the system crashes. Thanks a lot for your explanation and your patience! – AnjaM May 30 '14 at 10:22