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I have the following data set

angles =np.arange(-90,91,15)
n_col_cnts =([ 0.08692008,0.46557143,0.7282595,0.89681908,0.97057961,1.,0.99488705,0.91823478,0.84187586,  0.73110934,0.53363229,0.25338418,0.01328528])

I would like to fit a gaussian to this data using optimize.leastsq() from scipy but have reached a stumbling block. Here is what I have attempted from here

fitfunc = lambda p, x: p[0]*math.exp(-((x-p[1])/p[2])**2) #Target function
errfunc = lambda p, x, y: fitfunc(p, x) - y # Distance to the target function
p0 = [1., 0., 30.] # Initial guess for the parameters
fit, success = optimize.leastsq(errfunc, p0[:], args=(angles,n_col_cnts))

However I get the error message

TypeError: only length-1 arrays can be converted to Python scalars

which I do not understand. What have I done wrong?

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2 Answers 2

up vote 3 down vote accepted

I think fitfunc needs to work with arrays. Change math.exp to np.exp

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As Janne says, it needs to be able to support a large multi-dimensional 'x' as the independent variable - it's actually a matrix of them, something that took me quite a bit to find out yesterday. As a result it needs to be completely vector-ized so you have to use np.exp in order to allow the exponential of the elements of the matrix; not the matrix to a power. The parameters are allowed to take up 'm' spaces, but in the function you pass the independent variable can only take up one.

I hate to do this but someone asked a similar question yesterday and I wrote a quite in depth response if you're interested:

Curve fitting in Scipy with 3d data and parameters

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