[R] Constrained regression

Berwin A Turlach berwin at maths.uwa.edu.au
Mon Mar 3 18:41:30 CET 2008


G'day Carlos,

On Mon, Mar 3, 2008 at 11:52 AM 
Carlos Alzola <calzola at cox.net> wrote:

>  I am trying to get information on how to fit a linear regression
> with constrained parameters. Specifically, I have 8 predictors ,
> their coeffiecients should all be non-negative and add up to 1. I
> understand it is a quadratic programming problem but I have no
> experience in the subject. I searched the archives but the results
> were inconclusive.
>
>  Could someone provide suggestions and references to the
> literature, please?

A suggestion:

> library(MASS)   ## to access the Boston data
> designmat <- model.matrix(medv~., data=Boston)
> Dmat <- crossprod(designmat, designmat)
> dvec <- crossprod(designmat, Boston$medv)
> Amat <- cbind(1, diag(NROW(Dmat)))
> bvec <- c(1, rep(0,NROW(Dmat))
> meq <- 1
> library(quadprog)
> res <- solve.QP(Dmat, dvec, Amat, bvec, meq)

The solution seems to contain values that are, for all practical
purposes, actually zero:

> res$solution
 [1]  4.535581e-16  2.661931e-18  1.016929e-01 -1.850699e-17
 [5]  1.458219e-16 -3.892418e-15  8.544939e-01  0.000000e+00
 [9]  2.410742e-16  2.905722e-17 -5.700600e-20 -4.227261e-17
[13]  4.381328e-02 -3.723065e-18

So perhaps better:

> zapsmall(res$solution)
 [1] 0.0000000 0.0000000 0.1016929 0.0000000 0.0000000 0.0000000
 [7] 0.8544939 0.0000000 0.0000000 0.0000000 0.0000000 0.0000000
[13] 0.0438133 0.0000000

So the estimates seem to follow the constraints.

And the unconstrained solution is:

> res$unconstrainted.solution
 [1]  3.645949e+01 -1.080114e-01  4.642046e-02  2.055863e-02
 [5]  2.686734e+00 -1.776661e+01  3.809865e+00  6.922246e-04
 [9] -1.475567e+00  3.060495e-01 -1.233459e-02 -9.527472e-01
[13]  9.311683e-03 -5.247584e-01

which seems to coincide with what lm() thinks it should be:

> coef(lm(medv~., Boston))
  (Intercept)          crim            zn         indus          chas 
 3.645949e+01 -1.080114e-01  4.642046e-02  2.055863e-02  2.686734e+00 
          nox            rm           age           dis           rad 
-1.776661e+01  3.809865e+00  6.922246e-04 -1.475567e+00  3.060495e-01 
          tax       ptratio         black         lstat 
-1.233459e-02 -9.527472e-01  9.311683e-03 -5.247584e-01 

So there seem to be no numeric problems.  Otherwise we could have done
something else (e.g calculate the QR factorization of the design
matrix, say X, and give the R factor to solve.QP, instead of
calculating X'X and giving that one to solve.QP).

If the intercept is not supposed to be included in the set of
constrained estimates, then something like the following can be done:

> Amat[1,] <- 0
> res <- solve.QP(Dmat, dvec, Amat, bvec, meq)
> zapsmall(res$solution)
 [1] 6.073972 0.000000 0.109124 0.000000 0.000000 0.000000 0.863421
 [8] 0.000000 0.000000 0.000000 0.000000 0.000000 0.027455 0.000000

Of course, since after the first command in that last block the second
column of Amat contains only zeros
> Amat[,2]
 [1] 0 0 0 0 0 0 0 0 0 0 0 0 0 0
we might as well have removed it (and the corresponding entry in bvec)
> Amat <- Amat[, -2]
> bvec <- bvec[-2]
before calling solve.QP().

Note, the Boston data set was only used to illustrate how to fit such 
models, I do not want to imply that these models are sensible for these
data. :-)

Hope this helps.

Cheers,

	Berwin

=========================== Full address =============================
Berwin A Turlach                            Tel.: +65 6516 4416 (secr)
Dept of Statistics and Applied Probability        +65 6516 6650 (self)
Faculty of Science                          FAX : +65 6872 3919       
National University of Singapore     
6 Science Drive 2, Blk S16, Level 7          e-mail: statba at nus.edu.sg
Singapore 117546                    http://www.stat.nus.edu.sg/~statba



More information about the R-help mailing list