In R, you can fit GAM models from the `mgcv`

package using a formula which contains transformations such as `log`

or `sqrt`

and by default the `model.frame`

is returned (only the variables specified in the formula with transformations applied).

Is there any way I can recover the untransformed `data.frame`

?

**Example:**

`reg <- mgcv::gam(log(mpg) ~ disp + I(hp^2), data=mtcars)`

returns

```
> head(reg$model,3)
log(mpg) disp I(hp^2)
Mazda RX4 3.044522 160 12100
Mazda RX4 Wag 3.044522 160 12100
Datsun 710 3.126761 108 8649
```

But, I want to get this **untransformed** dataset from the model's `model.frame`

```
mpg disp hp
Mazda RX4 21.0 160 110
Mazda RX4 Wag 21.0 160 110
Datsun 710 22.8 108 93
```

**Some Background**: The `newdata`

argument for most model's `predict()`

function requires untransformed data, so I cannot feed the `model.frame`

back into the `predict()`

function. I am already aware that the omitting the `newdata`

argument will return fitted values. My requirement is that the model object gives me back the raw data.

`hp^2`

, which isn't invertible because it loses the sign of`hp`

. The smooth transformations used in`mgcv`

are certainly not invertible - they make it very possible to map two different input values to the same output. The only practical way to do this is to keep the data, as in Zheyuan's answer.