# Scipy LeastSq errorbars

I'm fitting an experimental spectrum to a theoretical expectation using LeastSq from SciPy. There are of course errors associated with the experimental values. How can I feed these to the LeastSq or do I need a different routine? I find nothing in the documentation.

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Are they errors from data formats (e.g. "null" ) or outliers ? In the latter case, there are no standard way to deal with it. –  georgesl Oct 31 '12 at 16:35
Can you give more detail on the error content and the distribution of errors? –  itsbruce Oct 31 '12 at 16:50
The errors are basically the sqrt of the number of counts in a channel. –  Stijn Oct 31 '12 at 16:53

The scipy.optimize.leastsq function does not have a built-in way to incorporate weights. However, the scipy.optimize.curve_fit function does have a `sigma` parameter which can be used to indicate the variance of each y-data point.

`curve_fit` uses `1.0/sigma` as the weight, where `sigma` can be an array of length `N`, (the same length as `ydata`).

So somehow you have to surmise the variance of each ydata point based on the size of the error bar and use that to determine `sigma`.

For example, if you declare that half the length of the error bar represents 1 standard deviation, then the variance (what `curve_fit` calls `sigma`) would be the square of the standard deviation.

``````sigma = (length_of_error_bar/2)**2
``````

Reference:

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I incorporated a weightfunction in the residuals function and it works fine. I might take a look at the curve_fit routine, but since I'm actually using lmfit (which handles the parameters awesome) my first approach is the weighting. –  Stijn Oct 31 '12 at 16:48
Oh yes, I suppose you could do it that way -- in which case you could use `leastsq`. –  unutbu Oct 31 '12 at 16:52