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I have a set of numbers which cause error when I try to do a curve fitting to them. I'm quite certain I managed to do this before with the same numbers (I'm certain I did with other data sets). What is causing this error then?

The X, Y, Err values are (by order of appearance)

[0.0, 0.6931471805599453, 1.3862943611198906]
[-5.354761064902713, -6.190455611580044, -6.558604540577015]
[0.0014079400762288246, 0.0006083544693643583, 0.0002989970199491765]

and kappa is equal to 8

This is the function I try to fit (largely a + 2*x)

 out = []
    for x in X:
        y = log(kappa)
        y += 4*log(pi)
        y += 2*x 
        y -= 2*log(2)
        out.append(-y)
    return np.array(out)

this is how I call curve_fit

 popt,pcov = curve_fit(fitFunc1,self.X[0:3],self.Y[0:3],sigma=self.Err[0:3],p0=kappa)

and this is the error I get

popt,pcov = curve_fit(fitFunc1,self.X[0:3],self.Y[0:3],sigma=self.Err[0:3],p0=kappa)
  File "/usr/lib/python2.7/dist-packages/scipy/optimize/minpack.py", line 506, in curve_fit
    res = leastsq(func, p0, args=args, full_output=1, **kw)
  File "/usr/lib/python2.7/dist-packages/scipy/optimize/minpack.py", line 355, in leastsq
    gtol, maxfev, epsfcn, factor, diag)
minpack.error: Error occurred while calling the Python function named _weighted_general_function

edit 1

Added kappa value (8)


edit 2

Here is a minimal working example of this

#!/usr/bin/python
import numpy as np
from scipy.optimize import curve_fit
from math import log,pi
X = [0.0, 0.6931471805599453, 1.3862943611198906]
Y = [-5.354761064902713, -6.190455611580044, -6.558604540577015]
Err = [0.0014079400762288246, 0.0006083544693643583, 0.0002989970199491765]
kappa = 8

def func(X,kappa):
    out = []
    for x in X:
        y = log(kappa)
        y += 4*log(pi)
        y += 2*x 
        y -= 2*log(2)
        out.append(-y)
    return np.array(out)


popt,pcov = curve_fit(func,X,Y,sigma=Err,p0=kappa)
share|improve this question
    
Please post all of the relevant code! –  YXD Sep 30 '13 at 11:40
    
mail.scipy.org/pipermail/scipy-user/2008-March/015724.html mind you where is kappa defined? –  doctorlove Sep 30 '13 at 11:51
    
@MrE apart from kappa anything else I missed? –  Yotam Sep 30 '13 at 11:51
1  
Is from out = [] the fitFunc1? Is the whitespace also wrong in the function? –  doctorlove Sep 30 '13 at 12:39
1  
@MrE I just uploaded one. –  Yotam Sep 30 '13 at 13:06

1 Answer 1

First, convert your input arrays to numpy arrays. This allows you to use broadcasting in your func. In addition, you should check if kappa<=0 and return a bad fit value to prevent from evaluating outside the domain you are probably interested in:

import numpy as np
from scipy.optimize import curve_fit
X = np.array([0.0, 0.6931471805599453, 1.3862943611198906])
Y = np.array([-5.354761064902713, -6.190455611580044, -6.558604540577015])
Err = np.array([0.0014079400762288246, 0.0006083544693643583, 0.0002989970199491765])
kappa = 8.0

def func(X,kappa):
    if kappa <=0: return np.inf
    return -(np.log(kappa) + 4*np.log(np.pi) + 2*X - 2*np.log(2))

popt,pcov = curve_fit(func,X,Y,sigma=Err,p0=kappa)
share|improve this answer
    
Thanks. Is there a chance that the way that kappa is altered between iterations was changed between python2.7 and python3? –  Yotam Oct 1 '13 at 7:03
    
@Yotam I doubt that the internals of scipy.optimize.curve_fit broke backwards comparability when they ported to python 3. The doc's make no mention of this either: docs.scipy.org/doc/scipy/reference/generated/… –  Hooked Oct 1 '13 at 13:24

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