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I am constructing efficient portfolio using multiple constraints: namely long position and minimum weight on given asset=34%(say). I am using the fPortfolio package to do this. According to the manual one can provide compound constraints by creating a string vector. I have some problem with that approach. Here is an example from the fPortfolio manual.

library(fPortfolio)
Data = SMALLCAP.RET[,c("BKE", "GG", "GYMB", "KRON")]
Spec = portfolioSpec()
setTargetReturn(Spec) = mean(colMeans(Data))
Constraints = "LongOnly"
efficientPortfolio(Data, Spec, Constraints)

This works. However I want to augment this by adding the minimum weight condition

Spec = portfolioSpec()  
setTargetReturn(Spec) = mean(colMeans(Data))
Constraints = c("LongOnly","minW[1]=0.34")
efficientPortfolio(Data, Spec, Constraints)

The above code doesn't give desired result. I know I am doing something wrong setting the constraint. Any help will be appreciated.

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1 Answer 1

Yes, it looks like the constraints line. Page 33 of the fPortfolio manual says

Constraints are defined by a character string or a vector of character strings. Summary Constraints: NULL, "LongOnly", "Short" There are three special cases, the settings constraints=NULL, constraints="Short", and constraints="LongOnly". Note, that these three constraint settings are not allowed to be combined with more general constraint definitions.

If you try this

library(fPortfolio)
Data = SMALLCAP.RET[,c("BKE", "GG", "GYMB", "KRON")]
Spec = portfolioSpec()  
setTargetReturn(Spec) = mean(colMeans(Data))
Constraints = "minW[1]=0.34"
efficientPortfolio(Data, Spec, Constraints)

you get

Title:
 MV Efficient Portfolio 
 Estimator:         covEstimator 
 Solver:            solveRquadprog 
 Optimize:          minRisk 
 Constraints:       minW 

Portfolio Weights:
   BKE     GG   GYMB   KRON 
0.3400 0.3390 0.1671 0.1538 

Covariance Risk Budgets:
   BKE     GG   GYMB   KRON 
0.3457 0.3421 0.2120 0.1002 

Target Return and Risks:
  mean     mu    Cov  Sigma   CVaR    VaR 
0.0243 0.0243 0.0962 0.0962 0.1592 0.1117 

which I think is what you are looking for.

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Thanks.. I thought as much. This is a huge limitation that one cannot impose more complex restrictions on weights. –  user227290 Dec 20 '11 at 6:39
    
@user227290: You could have Constraints = "minW=c(0.74,0,0,0)" or Constraints = "minW=c(0.74,-0.5,0,-1)" if you want something more complicated: the former would be "Long only" –  Henry Dec 20 '11 at 7:44
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