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What's the difference between scipy's optimize.fmin and optimize.leastsq? They seem to be used in pretty much the same way in this example page. The only difference I can see is that leastsq actually calculates the sum of squares on its own (as its name would suggest) while when using fmin one has to do this manually. Other than that, are the two functions equivalent?

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1 Answer 1

Different algorithms underneath.

fmin is using the simplex method; leastsq is using least squares fitting.

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Thanks, duffymo. So, what's the best way to pick a minimisation algorithm? I've played a bit with optimize.leastsq and optimize.fmin_slsqp, but in some cases I got slightly different results. Is there a "scientific" way to choose the right routine, or is it just trial and error to see which one works best for a given dataset? –  gandi2223 Sep 13 '11 at 23:20
    
Trial and error and judgement. There may not be a unique "right" answer in every case. –  duffymo Sep 14 '11 at 0:58

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