I'm trying to write a function that regresses multiple items, then tries to predict data based on the model:

```
"tnt" <- function(train_dep, train_indep, test_dep, test_indep)
{
y <- train_dep
x <- train_indep
mod <- lm (y ~ x)
estimate <- predict(mod, data.frame(x=test_indep))
rmse <- sqrt(sum((test_dep-estimate)^2)/length(test_dep))
print(summary(mod))
print(paste("RMSE: ", rmse))
}
```

If I pass the above this, it fails:

```
train_dep = vector1
train_indep <- cbind(vector2, vector3)
test_dep = vector4
test_indep <- cbind(vector5, vector6)
tnt(train_dep, train_indep, test_dep, test_indep)
```

Changing the above to something like the following works, but I want this done dynamically so I can pass it a matrix of any number of columns:

```
x1 = x[,1]
x2 = x[,2]
mod <- lm(y ~ x1+x2)
estimate <- predict(mod, data.frame(x1=test_indep[,1], x2=test_indep[,2]))
```

Looks like this could help, but I'm still confused on the rest of the process: http://finzi.psych.upenn.edu/R/Rhelp02a/archive/70843.html

`as.formula()`

? You can then manipulate the formula using text manipulation until you get it how you want (e.g. have the function you wrote create the formula based on the inputs), and then use as.formula to make it something that`lm`

will accept. – Ari B. Friedman Aug 6 '11 at 16:32`as.formula`

in combination with`paste`

. – Roman Luštrik Aug 6 '11 at 16:33`lm(y ~ ., data = your.df)`

. See also stackoverflow.com/questions/6951090/… what period stands for. – Roman Luštrik Aug 6 '11 at 17:15