# Python linear fitting with multiple error bars

I am fitting some data with a linear fit. I want to weight the error bars. Up to this point, I have been using bulldogs fitting.py. Their linear_fit makes weighted linear regressions very easy. Unfortunately, the data I'm working with has error in both the X and Y directions.

I was wondering how, both practically (in Python) and theoretically (in statistical terms), this would be done.

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Theoretically, this is Total least squares - called Deming regression in the 2-variables case. –  tiwo Aug 1 '12 at 2:17

There's a couple of choices:

Both of these solutions will account for independent error in X and Y directions (the scld array in odr).

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how does leastsq take the errors in x and y direction.? I can't find the paramters. –  esel Sep 5 '13 at 19:43
is that xtol? Sorry I should really improve this answer to have an example. –  Andy Hayden Sep 5 '13 at 20:08
i think xtol is just a small value to determine when to stop the algo. i suppose it only works with scipy.odr. –  esel Sep 5 '13 at 20:14

You can use the scipy.optimize.fmin() function (see this example) to minimize the merit function (which you have to define) that calculates the squared deviations in the x- and y-directions.

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The above link to the example by Stefano Messina is broken. –  aging_gorrila Jul 9 '13 at 17:38
@aging_gorrila Sorry, I don't know why, I fixed the link, now it brings to the scipy.optimize tutorial page. –  Stefano Messina Jul 17 '13 at 9:50