Hi all

I´m trying to analize the role of time since abandonement (continuous variable) 
and 
biophysical environmental conditions on the recovery of the vegetation trough 
succession.

First, I used non-linear least squares with nls function to model the effect of 
time on 
vegetation attributes. I tried several self-starting sigmoidal functions as 
data seems 
to conform to this type of models, and then chose the best model based on the 
minimum 
RSE and AIC. An example of the formula used is:

model1<-nls(vegetattrib~SSlogis(time, a, b, c))

Then, I wanted to add to the model the effect of some biophysical attribute 
(ie, soil 
type). But three problems arise: 1) I can´t include factors in the nls, 2) even 
if it 
were a continuous predictor, nls model try to fit it as a nonlinear predictor 
and I don
´t have an apriori reason to think that kind of relation exist, 3) nls doesn’t 
give r2´s 
(the statistical reason for this is described by Douglas Bates and can be found 
in 
https://stat.ethz.ch/pipermail/r-help/2000-August/007778.html). But the point 
is that 
for me is interesting to have an idea about how well the model describe the 
patter in 
data, as the r2 does. Is correct to calculate the % of deviance instead? Or 
something 
else?

So I decided to use a gam approach, were I can create an additive model with 
time and 
soil type. But gam creates a smoothing function for the relationship between 
time and 
vegetattr. The question is: Can I establish in gam the form of the relationship 
between 
time and vegetattr as, for example, a logistic relationship with the parameters 
estimated with the self starting nls function?

I´ve revised the book from S.Wood about GAM´s in R, but haven´t find something 
like 
that.

Any suggestions about how to model (and test) the effect of time as a nonlinear 
predictor plus other variables (preferably as linear predictors)?

Thanks in advance

Francisco


--
oikos.unam.mx

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