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Update: The original question is: Is there an R function using the same algorithm implemented in the "lsqnonlin" function in matlab? However, the answer is more related to searching a function in R. I think the answer is in general very helpful for R users. So I edited the title but asked the original question again here: Implementation of trust-region-reflective optimization algorithm in R

I am doing nonlinear least-square optimizations and found that the matlab function lsqnonlin performs better than all the optimization algorithms I tried in R (including the algorithms in function optimx, nlm, nlminb, solnp, etc.) in the sense that it is faster and found the "more correct" solution.

However, I did not find an implementation of the 'trust-region-reflective' algorithm in R that is used in Matlab. Does someone know if there is already an implementation? Also, is it always true that the 'trust-region-reflective' algorithm is a better algorithm for this kind of optimization?

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It is better to ask this question here :stats.stackexchange.com –  agstudy Dec 4 '12 at 13:18
    
thanks, @agstudy. I was actually not sure where to post. But I think I Matthew Plourde has answered my question. –  Zhenglei Dec 5 '12 at 15:30

1 Answer 1

up vote 4 down vote accepted

It sounds like lsqnonlin in the pracma package is what you're looking for.

I recommend installing the sos package for R. Its purpose is to help you answer questions like 'Is there a function out there that does this?'. findFn in this package will search what's on CRAN for the term you supply.

library(sos)
findFn('lsqnonlin')
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Cool, I didn't know about sos, thanks. –  AGS Dec 4 '12 at 14:18
    
Thank you very much for the help. I knew neither sos nor lsqnonlin in pracma, I will try them out. –  Zhenglei Dec 5 '12 at 15:20
    
I started working on this problem again and found that the lsqnonlin in the pracma package only implemented the levenberg-Marquardt algorithm. Here is the description of the function "lsqnonlin solves nonlinear least-squares problems, including nonlinear data-fitting problems, through the Levenberg-Marquardt approach. lsqnonneg solve nonnegative least-squares constraints problem." –  Zhenglei Feb 4 '13 at 11:20

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