# python scipy.optimize.leastsq jacobian estimation

I am using frequently scipy.optimize.leastsq() for my Ph.D thesis however I have no idea how can I get the estimate of a jacobian from the data that leastsq() returns. I need to know the estimate of a jacobian that is used in minimization to compare with the finite difference approximation at minimum.

Does anyone has a formula how to get it ?

This can be a bit tricky when you check how for e.g a covariance matrix is calculated inside leastsq()

Any help would be welcomed. Thank you!

-
The Jacobian leastsq uses is done by finite foward difference, so you won't win much. –  tillsten Dec 13 '11 at 12:16
Yes, but in my case the step in forward difference is very important. So if the leastsq is using too small value then the jacobian may be zero because of the rounding errors. So I need to compare the jacobians calculated by my own with the ones from leastsq. –  user1095523 Dec 13 '11 at 14:08
Are the terms in your matrix observed data with limited precision or from formulas so you could in principle compute them to as much precision as you liked? –  DSM Dec 13 '11 at 14:28
They are computed from "numerical formulas" however I cannot calculate them with given precision. This is because they come from a really complicated problem and there is a lot of "computational noise" in them. Because of this I know that changing a paramer by, let's say 0.001 will make nonsense and give random derivative, but change by 1.0 will be allright and derivative will be ok. This is why I need to see the jacobian, and better the step for each parameter that leastsq() is using. –  user1095523 Dec 13 '11 at 16:11
FYI: The size of steps used by the finite forward difference estimation of the Jacobian in `scipy.optimize.leastsq` is controlled by the `epsfcn` keyword argument. docs.scipy.org/doc/scipy/reference/generated/… Alternately, you could always supply your own function to calculate the Jacobian using a similar finite-difference method. –  Joe Kington Dec 13 '11 at 19:10
show 1 more comment