# How do I fit a multiple regression model in R using gam

I am trying to fit a GAM model with 8 predictors. one of the 8 is an exponential decay function of the form a*exp(b*X), where b<0. The other predictors are linear.

I can find a,b by using nls:

``````out <- nls(Y~a*exp(b*X1),data=dat1,start=list(a=-1.5,b=1e-4))
summary(out)
``````

Now I want to fit the multiple regression model and find the best a,b that fit this model in the general form of:

``````out <- gam(Y~nls(a*exp(b*X1)) +X2+X3+X4+X5+X6+X7+X8, data=dat1)
``````

Is there a way to achieve this in R? Ilik

-
Why do you want a GAM? There are no smooth functions in there? –  Gavin Simpson Jul 23 '12 at 13:14
@Gavin: I have a mix of linear and non-linear predictors, so GAM is the only way I know. I chose exponential decay because I know this is how this specific predictor is behaving in real life. A linear term for X1 gives a nice R-sqr but I need the model to predict over a wider range of values than what I use in the model. –  Ilik Jul 24 '12 at 8:09
No, I mean there are no other smooth terms in the model. You can't do what you want with `gam()` (which one is this?) as it can include parametric terms or smooth non-parametric terms or combinations of the two. It can't optimise a parametric non-linear fit. –  Gavin Simpson Jul 24 '12 at 8:28