I was trying to automate a final step model building. I would like to combine predictors from two separate models into one final model. I played around with `update.formula()`

but realized I can update an old lmfit$call to a new one, e.g `update.formula(lmfit$call,lmfitnew$call)`

. here i need to cherry pick variables from both models and run the final one

```
lmfit1 <- lm(y~ x1+x2+x3, data = modelready)
best.ngc_fit <- stepAIC(lmfit1, direction="backward")
best.ngc_fit$call
lm(formula = y~ x2+x3, data = modelready)
lmfit2 <- lm(y ~ a+b+c+d+f, data=fcstmodel)
best.fcst_fit <- stepAIC(lmfit2, direction ="backward")
best.fcst_fit$call
lm(formula = y~ a+c+d+f, data = fcstmodel)
```

This is what I would like to have in my final model

```
best.full_fit <- lm(y~x2+x3+a+c+d+f, data = fullmodel)
```

I can do it manually without a problem, but I would like to automate it in order to make the whole process less tedious.

Any help will be much appreciated