# Restricting values for curve_fit (scipy.optimize)

I'm trying to fit a logistic growth curve to my data using curve_fit using the following function as the input.

``````def logistic(x, y0, k, d, a, b):
if b > 0 and a > 0:
y = (k * pow(1 + np.exp(d - (a * b * x) ), (-1/b) )) + y0
elif b >= -1 or b < 0 or a < 0:
y = (k * pow(1 - np.exp(d - (a * b * x) ), (-1/b) )) + y0

return y
``````

As you can see the function i am using has some restrictions on the values it can accept for parameter a and b. Any guess on how to handle the incorrect values? Should the input function raise an exception or return a dummy value? Thanks in advance.

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When the parameters fall out of the admissible range, return a wildly huge number (far from the data to be fitted). This will (hopefully) penalize this choice of parameters so much that `curve_fit` will settle on some other admissible set of parameters as optimal:

``````def logistic(x, y0, k, d, a, b):
if b > 0 and a > 0:
y = (k * pow(1 + np.exp(d - (a * b * x) ), (-1/b) )) + y0
elif b >= -1 or b < 0 or a < 0:
y = (k * pow(1 - np.exp(d - (a * b * x) ), (-1/b) )) + y0
else:
y = 1e10
return y
``````
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It seems to work a little better, thank you! I'll play with it a little more though... –  mgalardini Mar 1 '12 at 15:37