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I am running a logistic regression in R and doing "backward elimination" inorder to get my final model:

FulMod2 <- glm(surv~as.factor(tdate)+as.factor(tdate)+as.factor(sline)+as.factor(pgf)
                                    +as.factor(colos)+as.factor(tb5) +as.factor(respon3)

When trying to run the backward elimination script:


I got this error message:

Error in step(FulMod2, direction = "backward", trace = FALSE) : 
  number of rows in use has changed: remove missing values?

This is the second model that I am running using the backward elimination function. The first model was fine when I did backward elimination to get my final model.

Any help would be very much appreciated!


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From ?step: Warning The model fitting must apply the models to the same dataset. This may be a problem if there are missing values and R's default of na.action = na.omit is used. We suggest you remove the missing values first. You could look at ?complete.cases to identify complete and incomplete cases in sof. –  BenBarnes Apr 3 '12 at 7:33
@BenBarnes, Thanks for your help. I have 9000 records and after applying "complete.cases", it has now dropped to 8000. I am just thinking if that is far too many to lose? Anyway, thanks once again! –  baz Apr 3 '12 at 7:54
On another note, if your predictors correspond to the rest of the columns in sof, then you can use the . operator for ?formula to "specify all columns not otherwise named in the model. So something like glm(surv ~ ., data sof, family = binomial(link = "logit")). You'll want to make all of the classes as.factor() beforehand. Also, your first two predictors as.factor(tdate)+as.factor(tdate) seem identical. Is that intentional? –  Chase Apr 3 '12 at 12:54
@Chase, Thanks for that. Regarding the first two predictors as.factor(tdate)+as.factor(tdate), it was not intentional! –  baz Apr 3 '12 at 23:35

1 Answer 1

up vote 4 down vote accepted

In order to successfully run step() on your model for backwards selection, you should remove the cases in sof with missing data in the variables you are testing.

myForm <- as.formula(surv~
  +as.factor(colos)+as.factor(tb5) +as.factor(respon3)

sofNoMis <- sof[which(complete.cases(sof[,all.vars(myForm)])),]

FulMod2 <- glm(myForm,family=binomial(link="logit"),data=sofNoMis)


In your comment, you mentioned that 1 out of 9 cases has missing data. However, I recommend checking that again with the above code, in case some of that missingness corresponded to variables not included in FulMod2. If you still have many incomplete cases, you might want to decide a priori if you can eliminate some of the variables with high missingness.

share|improve this answer
I ran the model as you suggested above and gave me 8000 from 9000 records. Almost all predictors with high missing values are in the full model. Thanks! –  baz Apr 3 '12 at 23:59

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