I am currently using
nlme to perform mixed-effects regression.
I would like to perform constrained optimization by providing upper and lower bounds to the parameters within the call to
Is this possible?
Here are two easy ways, without messing with nlme parameters: 1) fit a set of models on your boundaries and choose the model with the best fit, and 2) use a transformed version of your parameter that maps the reals to your desired interval.
You can have upper and lower bounds for estimates in a mixed-effects regression in R. R has a rich resource on mixed model analysis. This link explains mixed-model concepts as well as provides R code step by step using
You may also refer to this post for constrained optimization using