# Limits on NLME regression?

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 `nlme`.

Is this possible?

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This may be helpful: stat.ethz.ch/R-manual/R-devel/library/nlme/html/… –  Stat-R Aug 14 '12 at 23:56
That provides the confidence intervals on the calculated coefficients, but does not provide the ability to limit the coefficients during the regression. –  arkottke Aug 15 '12 at 0:16
What do you mean by ability to limit the coefficients during the regression. –  Stat-R Aug 15 '12 at 0:24
See `lower` and `upper` in nlminb –  arkottke Aug 15 '12 at 0:30
Not easily (perhaps), see this old help thread, but the answer is from one of the authors of `nlme`. –  mnel Aug 15 '12 at 0:54

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.

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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 `nlme`.
You may also refer to this post for constrained optimization using `nlme`.
They are there in some form. See page-3 for `nlme`. The function for estimating the model is `lme`. –  Stat-R Aug 15 '12 at 0:20
I deleted my earlier comment because I could find `nlme`, but I still don't see anything about limit, upper, or lower -- which are keywords for the `nlminb` the algorithm used in the `nlme` optimization. I have read all of the `nlme` and related documents. –  arkottke Aug 15 '12 at 0:27