# linear program solver with box/bound constraints?

Is there a linear program optimizer in R that supports upper and lower bound constraints?

The libraries limSolve and lpSolve do not support bound constraints.

It is not at all clear from the R Cran Optimization Task View page which LP optimizers support bound constraints.

-
Certainly, all lp solvers will, including lpSolve. Instead of, say, $a \leq x \leq b$, just make $x \geq a$ and $x \leq b$ as two constraints in the constraint matrix for lpSolve. Or am I failing to understand your question? –  jbowman Jan 5 '12 at 20:30
+1 This is a clever approach, however, the memory required to store the constraint matrices explodes. –  Quant Guy Jan 5 '12 at 23:00
Are you familiar with AMPL? There's an R interface to the GLPK, which has an AMPL-like language for describing the problem. I haven't used it myself, though. R link and GLPK. –  jbowman Jan 5 '12 at 23:35
"the memory required to store the constraint matrices explodes". No, it doesn't: it grows as 2*k (k is the number of parameters.) –  user189035 Jan 6 '12 at 9:53
limSolve support bound constraints. You may even use package LIM (cran.r-project.org/web/packages/LIM) to formulate those in human readable format. For example: 'Faeces = [minFaeces,maxFaeces]'. –  user2030503 Jan 25 at 8:52

## migrated from stats.stackexchange.comJan 5 '12 at 20:26

This question came from our site for people interested in statistics, machine learning, data analysis, data mining, and data visualization.

Please note that all linear programming solvers assume their variables are positive. If you need different lower bounds, the easiest thing is to perform a linear transformation on the variables, apply lpSolve (or Rglpk), and retransform the variables. This has been explained in a posting to R-help some time ago -- which I am not able to find at the moment.

By the way, Rglpk has a parameter 'bounds' that allows to define upper and lower bounds through vectors, not matrices. That may attenuate your concern about matrices growing too fast.

-