[R] Most appropriate function for the following optimisation issue?
Duncan Murdoch
murdoch.duncan at gmail.com
Tue Oct 20 15:35:17 CEST 2015
On 20/10/2015 6:58 AM, Andy Yuan wrote:
> Hello
>
> Please could you help me to select the most appropriate/fastest function to use for the following constraint optimisation issue?
Just project S into the space orthogonal to B, i.e. compute the
residuals when you regress S on B (with no intercept). For example,
X <- lsfit(B, S, intercept=FALSE)$residuals
>
> Objective function:
>
> Min: Sum( (X[i] - S[i] )^2)
>
> Subject to constraint :
>
> Sum (B[i] x X[i]) =0
>
> where i=1��n and S[i] and B[i] are real numbers
>
> Need to solve for X
>
> Example:
>
> Assume n=3
>
> S <- c(-0.5, 7.8, 2.3)
> B <- c(0.42, 1.12, 0.78)
>
> Many thanks
> AY
>
>
>
> [[alternative HTML version deleted]]
>
>
>
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