I would like to get a table of top 10 absolute and relative frequencies for a variable across other factor variable. I have a dataframe with 3 columns: 1 column is a factor variable, 2nd is other variable I need to count, 3 is logical variable as a constraint. (real database has more than 4mln observations)

```
dtf<-data.frame(c("a","a","b","c","b"),c("aaa","bbb","aaa","aaa","bbb"),c(TRUE,FALSE,TRUE,TRUE,TRUE))
colnames(dtf)<-c("factor","var","log")
dtf
factor var log
1 a aaa TRUE
2 a bbb FALSE
3 b aaa TRUE
4 c aaa TRUE
5 b bbb TRUE
```

So I need to find top absolute and relative frequencies of "var" where "log"==TRUE across each factor of "factor".

I've tried this with absolute frequencies (in real db I extract top 10, here I get 2 lines):

```
t1<-tapply(dtf$var[dtf$log==T],dtf$factor[dtf$log==T],function(x)(head(sort(table(x),decreasing=T),n=2L)))
# Returns array of lists: list of factors containing list of top frequencies
t2<-(t1, ldply)
# Split list inside by id and freq
t3<-do.call(rbind, lapply(t2, data.frame))
# Returns dataframe of top "var" values and corresponding freq for each group in "factor"
# Factor variable's labels are saved as row.names in t3
```

The following function helps to find relative frequency as for the whole database, not grouped by factors:

```
getrelfreq<-function(x){
v<-table(x)
v_rel<-v/nrow(dtf[dtf$log==T,])
head(sort(v_rel,decreasing=T),n=2L)}
```

But I have problems with relative frequencies as I need to divide the absolute frequency by number of rows of "var" BY EACH factor, not TOTAL nrow of "var" where "log"==T. I don't know how to use that in tapply loop such that the denominator will be different for each factor. I also would like to use both functions in 1 tapply loop instead of generating many tables and merging results. But have no idea how to put such 2 functions together.