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In the very simple example below (fitting a straight line y=ax+b with known outcome `a=b=0), the SciPy curve_fit function yields a wrong result when the x-variable is supplied as float32-type:

import numpy as np
import scipy.optimize as opt

def func(x, a, b): return a*x + b

x = np.array([0,1])
y = np.array([0,0])
p0 = [0.1, 0.1]
p1 = opt.curve_fit(func,            x , y, p0=p0)
p2 = opt.curve_fit(func, np.float64(x), y, p0=p0)
p3 = opt.curve_fit(func, np.float32(x), y, p0=p0)

print '\n p1 = ',p1,'\n p2 = ',p2,'\n p3 = ',p3

which yields the output:

p1 =  (array([ 0.,  0.]), inf) 
p2 =  (array([ 0.,  0.]), inf) 
p3 =  (array([ 0.1,  0.1]), inf)

Why is that last result (obtained with float32-input) different from the other two, and - obviously - wrong? Apparently, curve_fit has not performed even a single iteration, since the fit result p3 equals the initial guess p0. To me, this seems like a bug ...

share|improve this question
    
If you encounter something that seems like a bug, report the bug to the developers of the software (scipy.org/BugReport). –  Stephen Canon Nov 2 '12 at 16:22
    
@Stephen I already did :-) –  Rolf Bartstra Nov 2 '12 at 17:16
    
Glad to hear it! –  Stephen Canon Nov 2 '12 at 17:30
    
its a problem with accuracy, espeacially for the jacobian estimation I think... the thresholds, steps, etc. are not automatically set to be reasonable for this case. –  seberg Nov 2 '12 at 17:43
    
@all: I have just been informed that this is a known bug in numpy.leastsq, reported 4y ago (!) –  Rolf Bartstra Nov 2 '12 at 19:13

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