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I am a bit confused about convolutions in python. I tried to define this function:

from scipy import signal
import numpy as np
import matplotlib.pyplot as plt

def f(x,A,t,mu,sigma):
    y1 = A*np.exp(-x/t)
    y2 = A*np.exp(-0.5*(x-mu)**2/sigma**2)
    return signal.convolve(y1,y2)/ sum(y2)

x = np.arange(-10,10,0.01)

x has dimension 2000, but f(x) seems to have size 3999 and I am not sure to what values of x this corresponds. In principle I want to fit this function (a convolution of a gaussian and exponential) like this:

from scipy.optimize import curve_fit
popt, pcov = curve_fit(f, x_data, y_data)

but I am kinda stuck, as I am not even sure on how to call the fitted values (assuming this would work), given that f(x_data) will be bigger than x_data. Can someone help me a bit here? Thank you!

1 Answer 1

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scipy is using numpy.convolve to calculate the convolution. If you provide no mode argument, the default is full:

‘full’: By default, mode is ‘full’. This returns the convolution at each point of overlap, with an output shape of (N+M-1,). At the end-points of the convolution, the signals do not overlap completely, and boundary effects may be seen.

This is why the full mode gives adds this "extra" points. You can also have a look in the Wikipedia article.

I think what you are probably looking for is the mode same, since you probably do not care about the boundary effects. So I would recommend to change the return of your function to:

 return signal.convolve(y1,y2, 'same')/ sum(y2)

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