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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

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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

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