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Constrained least-squares estimation in Python

I'm trying to perform a constrained least-squares estimation using Scipy such that all of the coefficients are in the range (0,1) and sum to 1 (this functionality is implemented in Matlab's LSQLIN function).

Does anybody have tips for setting up this calculation using Python/Scipy. I believe I should be using scipy.optimize.fmin_slsqp(), but am not entirely sure what parameters I should be passing to it.[1]

Many thanks for the help, Nick

[1] The one example in the documentation for fmin_slsqp is a bit difficult for me to parse without the referenced text -- and I'm new to using Scipy.

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Nick Avatar asked Feb 13 '12 23:02

Nick


2 Answers

scipy-optimize-leastsq-with-bound-constraints on SO givesleastsq_bounds, which is leastsq with bound constraints such as 0 <= x_i <= 1. The constraint that they sum to 1 can be added in the same way.
(I've found leastsq_bounds / MINPACK to be good on synthetic test functions in 5d, 10d, 20d; how many variables do you have ?)

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denis Avatar answered Sep 28 '22 09:09

denis


Have a look at this tutorial, it seems pretty clear.

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ev-br Avatar answered Sep 28 '22 09:09

ev-br