# cr.setup in rms

Could someone please explain how the `cr.setup` functions in `rms` package works? I can't seem to figure out how it remaps the initial data and how this remapping is useful for the continuation ratio model and the help and examples are not that helpful. Can't find any other explanation on the net either.

-
have you looked at the function by typing `cr.setup`? –  Arun Feb 24 '13 at 11:37
of course...... –  ECII Feb 24 '13 at 11:41
You're basically telling that you can't understand the function then. Why don't you copy the function and just test step by step with an input? –  Arun Feb 24 '13 at 11:43
Voting to reopen. Already have a response composed and it is definitely an R-coding response. In case my reopening efforts fail (as I expect they will since I have never seen a successful reopening) , I will note that pages 338-342 of Harrell's "Regression Modeling Strategies" have the expanded background I was going to cite. –  BondedDust Feb 24 '13 at 17:38
yes, but you don't have to wait very long! –  Ben Bolker Feb 24 '13 at 18:13

In his excellent text "Regression Modeling Strategies" Harrell has three pages at the end of his chapter on ordinal logistic regression devoted to the continuation ratio model. `cr.setup` is supporting the process of "tricking ordinary logistic regression" by duplicating certain rows and creating stratum markers for various comparisons: `Y >= 0; Y>=1, ... Y>=K-1` and also creating appropriate response variables to represent the "outcome" for particular strata. Look at his first example for cr.setup:

``````y <- c(NA, 10, 21, 32, 32)
> cr.setup(y)
\$y
[1] NA  1  0  1  0  0  0  0

\$cohort
[1] <NA>  all   all   y>=21 all   y>=21 all   y>=21
Levels: all y>=21

\$subs
[1] 1 2 3 3 4 4 5 5

\$reps
[1] 1 1 2 2 2
``````

With three levels of non-NA Y's, there would be only 2 levels of the neo-outcome. The y vector is the neo-outcome. The `subs` vector elements are the indices inot the original data. The `reps` vector tells the software how many replications are needed. You can see how this is used in practice by following down the example :

``````combinations <- expand.grid(cohort=levels(cohort), sex=levels(sex))
combinations
``````
-
A little bit of this information is available through the Amazon preview: amazon.com/… Look at section 13.4. The details of the R code are not available, but there's a lot of good general background there which might help. I also strongly recommend just buying the book if you can afford it; you can get a 20% discount via r-project.org/doc/bib/springer.txt –  Ben Bolker Feb 24 '13 at 18:19
DWin & Ben Bolker: Thank you for your replies (I ordered the book, gracias Ben for the -20%!). I still don't get it. Why is this remapping necessary to fit CR models? What does remapping essentially achieve? How should I interpret the coef? How do I get the unconditional probs from regression coefficients for each outcome level? I guess what I am missing is a good example with comments on each step (the one in the help file is bad one with no explanations whatsoever). And there is surprisingly little info on the net about CR. Could you please help me? Will be glad to start a bounty.. –  ECII Feb 24 '13 at 19:12
large parts of this sound more suitable for CrossValidated ( stats.stackoverflow.com ) ... googling `ordinal regression "continuation ratio"` got me a fair bit, seems like some of it should be useful ... –  Ben Bolker Feb 24 '13 at 20:04
It's NOT necessary as explained in that book section. It's merely convenient for purposes that are explained. I also think it helps make the model more "accessible". I see a parallel with the situation that existed 25 years ago when the 'other way' to get conditional logistic regression estimates (besides using the FORTRAN special purpose code on the VAX) was to code the case-control groupings as strata in a Cox model. (And I agree this discussion is more suitable for CrossValidated. I tried to reopen the question because it seemed R-specific at the time.) –  BondedDust Feb 24 '13 at 22:50