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I want to rank a set of variables every day (starting with a zoo series).

Here's an example:

set.seed(1)
x <- zoo(matrix(rnorm(9), nrow=3), as.Date("2010-01-01") + 0:2)
colnames(x) <- letters[1:3]

The only way I know to do this is with rollapply, but this is quite slow.

>  rollapply(x, 1, rank, by.column=FALSE)
           a b c
2010-01-01 1 3 2
2010-01-02 1 2 3
2010-01-03 1 2 3

Any other suggestions?

share|improve this question

First off, thanks for sending a complete and reproducible example.

Secondly, I like your solution. You may be hard-pressed to make it much faster yet keeping it simple. One solution is to jst work on the underlying matrix (rather than the zoo object):

> X <- coredata(x)
> t(apply(X, 1, rank))
     a b c
[1,] 1 3 2
[2,] 1 2 3
[3,] 1 2 3
> 

and to then re-attach the time index. That may be faster, but not necessarily more defensive or more easily readable.

share|improve this answer
    
Thanks @Dirk! Great suggestion. I guess my reproducible example has limits in that it can't reproduce the speed factor on a large dataset. But I suppose that can be inferred... – griffin Nov 9 '10 at 20:04
    
Yes, and that is the second step -- create some larger data and profile. If there are low-hanging fruit, pick'em. Else, there's always C/C++ if you really need the speed. – Dirk Eddelbuettel Nov 9 '10 at 20:05
    
Do you have any suggestions for C++ time series classes? – griffin Nov 9 '10 at 20:08
    
For times, I just use as.numeric(index(x)) to create floats and pass those as a single vector. For the rest, eg coredata(x), I use a matrix -- and yes, I am somewhat partial to Rcpp and RcppArmadillo. Maybe one day I'll sit down with Jeff and hash out how to bring some of the xts indexing closer to Rcpp. So far, the basic vector and matrix solution worked just fine. – Dirk Eddelbuettel Nov 9 '10 at 20:10

I think you're going about this the right way. Using order instead of rank is a bit faster, but I don't see how this is "quite slow". Maybe you could elaborate a bit on your actual problem?

> system.time(for(i in 1:1000) rollapply(z, 1, order, by.column=FALSE))
   user  system elapsed 
      1       0       1 
> system.time(for(i in 1:1000) rollapply(z, 1, rank, by.column=FALSE))
   user  system elapsed 
   1.34    0.00    1.34 
share|improve this answer
    
Thanks @Joshua! Yes, the issue is that I'm working with some very long and wide time series. This is not to say that this approach is slow in comparison to anything; just that I'm spending time counting sheep while it runs and was hoping for a more "vectorized" approach. – griffin Nov 9 '10 at 20:02

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