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Suppose, I've a data.frame as follows:

DF <- data.frame(x=1:10, strata2013=sample(letters[1:3], 10, TRUE))

    x strata2013
1   1          b
2   2          a
3   3          a
4   4          b
5   5          b
6   6          a
7   7          a
8   8          b
9   9          a
10 10          a

And I'd like to get the counts for each unique value in the column strata2013, then, using data.table (for speed), one could do it in this manner:

DT <-
DT[, .N, by=strata2013]
   strata2013 N
1:          b 4
2:          a 6

Now, I'd like to try and accomplish this in Rcpp, as a learning exercise. I've written and tried out the code shown below which is supposed to provide the same output, but instead it gives me an error. Here's the code:

#include <Rcpp.h>
using namespace Rcpp;  

// [[Rcpp::export]]
NumericVector LengthStrata (CharacterVector uniqueStrata, DataFrame dataset ) {
  int n = uniqueStrata.size();
  NumericVector Nh(n);
  Rcpp::CharacterVector strata=dataset["strate2013"];
  for (int i = 0; i < n; ++i) {
  return Nh;

Here is the error message:

conversion from 'Rcpp::Vector<16>::Proxy {aka Rcpp::internal::string_proxy<16>}' 
to 'const size_t { aka const long long unsigned int}' is ambiguous

What am I doing wrong? Thank you very much for your help.

share|improve this question
Is this a simplified example? Because from your description ist sounds like something that could be done very efficiently with R. – Roland Jan 14 '14 at 14:33
I know that aggregate function can do it easily, but I just want to compare... – Herimanitra Jan 14 '14 at 15:03
I wasn't talking about aggregate. There are much more efficient alternatives. However, your description doesn't sound like it needs aggregate. But you are not explaining very clearly in your question. – Roland Jan 14 '14 at 15:10
dataset[,.N,by=strate2013] is very fast. Read the data.table vignettes. – Roland Jan 14 '14 at 15:29
dataset[,.N,by=strate2013] works fine, I've just tried... but my goal is to have an rcpp implementation of this – Herimanitra Jan 14 '14 at 16:08
up vote 7 down vote accepted

If I understand correctly, you're hoping that strata( uniqueStrata(i) ) will subset the vector, similar to how R's subsetting operates. This is unfortunately not the case; you would have to perform the subsetting 'by hand'. Rcpp doesn't have 'generic' subsetting operates available yet.

When it comes to using Rcpp, you really want to leverage the C++ standard library where possible. The de-facto C++ way of generating these counts would be to use a std::map (or std::unordered_map, if you can assume C++11), with something like the following. I include a benchmark for interest.

Note from Dirk: unordered_map is actually available from tr1 for pre-C++11, so one can include it using e.g. #include <tr1/unordered_map>

#include <Rcpp.h>
using namespace Rcpp;

// [[Rcpp::export]]
IntegerVector LengthStrata( DataFrame dataset ) {
  Rcpp::CharacterVector strata = dataset["strata2013"];
  int n = strata.size();
  std::map<SEXP, int> counts;
  for (int i = 0; i < n; ++i) {
    ++counts[ strata[i] ];
  return wrap(counts);

/*** R
DF <- data.frame(strata2013=sample(letters, 1E5, TRUE))
DT <- data.table(DF)
DT[, .N, by=strata2013]
  DT[, .N, by=strata2013]

gives me

Unit: milliseconds
                      expr      min       lq   median       uq       max neval
          LengthStrata(DF) 3.267131 3.831563 3.934992 4.101050 11.491939   100
 DT[, .N, by = strata2013] 1.980896 2.360590 2.480884 2.687771  3.052583   100

The Rcpp solution is slower in this case likely due to the time it takes to move R objects to and from the C++ containers, but hopefully this is instructive.

Aside: This is, in fact, already included in Rcpp as the sugar table function, so if you want to skip the learning experience, you can use a pre-baked solution as

#include <Rcpp.h>
using namespace Rcpp;  

// [[Rcpp::export]]
IntegerVector LengthStrata( DataFrame dataset ) {
  Rcpp::CharacterVector strata = dataset["strata2013"];
  return table(strata);

Sugar improves the speed of the Rcpp function:

 Unit: milliseconds
                      expr      min       lq   median       uq       max neval
          LengthStrata(DF) 5.548094 5.870184 6.014002 6.448235  6.922062   100
 DT[, .N, by = strate2013] 6.526993 7.136290 7.462661 7.949543 81.233216   100
share|improve this answer
How can I know that a given function in R like table() is available in 'sugar'? – Herimanitra Jan 19 '14 at 20:24
Two main ways: the sugar vignette, and browsing the online doxygen documentation – Kevin Ushey Jan 19 '14 at 20:26

I am not sure I understand what you are trying to do. And when strata is a vector

     Rcpp::CharacterVector strata=df["strate2013"];

then I am not sure what


is supposed to do. Maybe you could describe in words (or in R with some example code and data) what you are trying to do here.

share|improve this answer
I reformulate my question. Suppose we use "mtcars" dataset in R; data(mtcars). Suppose mtcars$cyl is my strata which we suppose here to be a character vector. mtcars$cyl has 03 distinct values. What I want to do is to have an rcpp implementation of the aggregate function in R. For example, I want the number of obs for each distinct value of mtcars$cyl – Herimanitra Jan 14 '14 at 14:59
And what makes you think that just calling the size() member function would accomplish that? – Dirk Eddelbuettel Jan 14 '14 at 15:03
strata(uniqueStrata(i)).size() is supposed to subset the vector and gives its length like the length function in R – Herimanitra Jan 14 '14 at 15:44
I've never thought that "just calling size()" will solve the problem. That's why I'm asking – Herimanitra Jan 14 '14 at 19:47

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