# Probability predictions with cumulative link mixed models

I am trying to fit cumulative link mixed models with the `ordinal` package but there is something I do not understand about obtaining the prediction probabilities. I use the following example from the `ordinal` package:

``````   library(ordinal)
data(soup)
## More manageable data set:
dat <- subset(soup, as.numeric(as.character(RESP)) <=  24)
dat\$RESP <- dat\$RESP[drop=TRUE]
m1 <- clmm2(SURENESS ~ PROD, random = RESP, data = dat, link="logistic",  Hess = TRUE,doFit=T)
summary(m1)
str(dat)
``````

Now I am trying to get predictions of probabilities for a new dataset

``````newdata1=data.frame(PROD=factor(c("Ref", "Ref")), SURENESS=factor(c("6","6")))
``````

with

``````predict(m1, newdata=newdata1)
``````

but I am getting the following error

``````Error in `contrasts<-`(`*tmp*`, value = contr.funs[1 + isOF[nn]]) :
contrasts can be applied only to factors with 2 or more levels
``````

Why am I getting this error? Is there something in the syntax of `predict.clmm2()` wrong? Generally which probabilities does does predict.clmm2() output? The `Pr(J<j)` or `Pr(J=j)`? Could someone point me to information (site, books) material regarding fitting categorical (ordinal) ordinal mixed models specifically with R. From my search in the literature and net, most researchers fit these kind of models with SAS.

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You probably need to do something like `newdata1=data.frame(PROD=factor(c("Ref","Ref") , levels = c("Ref","Somethingelse"), ... )` - the error states you can't predict something with less than 2 factor levels (which you have). –  Simon O'Hanlon Jul 5 '13 at 14:46
(Disclaimer: I don't know anything about CLMMs) In your model formula, `SURENESS` appears to be your response variable, but you use it in your newdata instead of SOUPTYPE. Also, you leave PROD out of your original formula but include it in your newdata. Was that intentional? In any event, When I run the code, regardless whether I use SOUPTYPE or SURENESS in newdata, R tells me the other variable is missing (i.e. I'm getting a different error from you, R 2.15.0) –  David Marx Jul 5 '13 at 15:04
Thanks. I corrected it but still spits the same error. –  ECII Jul 5 '13 at 15:45
@DavidMarx: `predict.clmm2` requires that the response variable be in the newdata argument, as well as requiring that the factor levels match the original data. –  BondedDust Jul 5 '13 at 16:21

You did not say what you corrected, but when I use this, I get no error:

``````newdata1=data.frame(PROD=factor(c("Test", "Test"), levels=levels(dat\$PROD)),
SURENESS=factor(c("1","1")) )
predict(m1, newdata=newdata1)
``````

The output from predict.clmm2 with a newdata argument will not make much sense unless you get all the factor levels aligned so they are in the agreement with the input data:

``````> newdata1=data.frame(
PROD=factor(c("Ref", "Test"), levels=levels(dat\$PROD)),
SURENESS=factor(c("1","1")) )
> predict(m1, newdata=newdata1)
[1] 1 1 1 1 1 1 1 1 1 1 1 1
``````

Not very interesting. The prediction is for an outcome with only one level to have a probability of 1 of being in that level. (A vacuous prediction.) But recreating the structure of the original ordered outcomes is more meaningful:

``````> newdata1=data.frame(
PROD=factor(c("Ref", "Test"), levels=levels(dat\$PROD)),
SURENESS=factor(c("1","1"), levels=levels(dat\$SURENESS)) , )
> predict(m1, newdata=newdata1)
[1] 0.20336975 0.03875713
``````

You can answer the question in the comments by assembling all the predictions for various levels:

``````> sapply(as.character(1:6), function(x){ newdata1=data.frame(PROD=factor(c("Ref", "Test"), levels=levels(dat\$PROD)), SURENESS=factor(c(x,x), levels=levels(dat\$SURENESS))  );predict(m1, newdata=newdata1)})
1          2          3          4         5         6
[1,] 0.20336975 0.24282083 0.10997039 0.07010327 0.1553313 0.2184045
[2,] 0.03875713 0.07412618 0.05232823 0.04405965 0.1518367 0.6388921
> out <- .Last.value
> rowSums(out)
[1] 1 1
``````

The probabilities are `Pr(J=j|X=x & Random=all)`.

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Thanks. I guess I missed the fact that its important to spacify matcing values and labels for the categorical regressors. Is this specific to `predict.clmm2()` ? Do you also happen to know what kind of probabilities are in the output of `predict.clmm2()`? Are they Pr(J<j) or Pr(J=j)? –  ECII Jul 5 '13 at 17:11
Not just the regressors, but also the outcomes. –  BondedDust Jul 5 '13 at 17:42
Thanks a lot. Just to check, the fits are of the model `log(odds)=a+bx` right? I am asking because other programs tend to fit `log(odds)=a-bx` –  ECII Jul 6 '13 at 7:37
You should study the vignette: cran.r-project.org/web/packages/ordinal/vignettes/clm_intro.pdf . It looks like the clm package uses follows the convention you attribute to "other programs". I think it lets the probabilities sum to unity. –  BondedDust Jul 8 '13 at 21:38