I have a dataset that I'll call *dataset1* with a predictor variable (e.g. *Price*). I'm hoping to get a nice single predictor of price based on the *n* other predictors that exist in the dataset. But if *n* is large, I can't manually make and examine all these models, so I was hoping to use something like this:

```
for (i in names(dataset1)) {
model = lm(Price~i, dataset1)
# Do stuff here with model, such as analyze R^2 values.
}
```

(I thought this would work since replacing the inside of the for loop with print(i) results in the correct names.) The error is as follows:

```
Error in model.frame.default(formula = Price ~ i, data = dataset1, drop.unused.levels = TRUE) :
variable lengths differ (found for 'i')
```

Does anyone have advice for dealing with the problem regarding how R reads in the *i* variable? I know how to approach this problem using other software, but I would like to get a sense of how R works.

`paste`

the formula together and then use`do.call`

, as suggested here: stackoverflow.com/a/7668846/210673 – Aaron Mar 6 '13 at 21:35