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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.

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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 '14 at 8:52

2 Answers 2

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.

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Commands in the Rglpk package do constraints.

Or consider the General Purpose Continuous Solvers;

  • Package stats offers several general purpose optimization routines. First, function optim() provides an implementation of the Broyden-Fletcher-Goldfarb-Shanno (BFGS) method, bounded BFGS, conjugate gradient, Nelder-Mead, and simulated annealing (SANN) optimization methods. It utilizes gradients, if provided, for faster convergence. Typically it is used for unconstrained optimization but includes an option for box-constrained optimization.
  • Additionally, for minimizing a function subject to linear inequality constraints stats contains the routine constrOptim().
  • nlminb() offers unconstrained and constrained optimization using PORT routines.
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