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(weight5)+as.factor(backfat5)+as.factor(srect2)
+as.factor(bcs)+as.factor(loco3)+as.factor(fear3)
+as.factor(teats)+as.factor(preudder)+as.factor(postudder)
+as.factor(colos)+as.factor(tb5) +as.factor(respon3)
+as.factor(feed5)+as.factor(bwt5)+as.factor(sex)
+as.factor(fos2)+as.factor(gest3)+as.factor(int3),
family=binomial(link="logit"),data=sof)
```

When trying to run the backward elimination script:

```
step(FulMod2,direction="backward",trace=FALSE)
```

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!

Baz

`?step`

:WarningThe 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`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