# Plotting of 1-dimensional Gaussian distribution function

How do I make plots of a 1-dimensional Gaussian distribution function using the mean and standard deviation parameter values (μ, σ) = (−1, 1), (0, 2), and (2, 3)?

I'm new to programming, using Python.

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what have you tried? –  Francesco Montesano Feb 14 '13 at 10:58

With the excellent matplotlib and numpy packages

from matplotlib import pyplot as mp
import numpy as np

def gaussian(x, mu, sig):
return np.exp(-np.power(x - mu, 2.) / 2 * np.power(sig, 2.))

for mu, sig in [(−1, 1), (0, 2), (2, 3)]:
mp.plot(gaussian(np.linspace(-3, 3, 120), mu, sig))

mp.show()


will produce something like

Also - www.whathaveyoutried.com sometimes I feel like such a homework mug.

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Your gaussian PDF is wrong - you need to scale by (\sqrt(2\pi)\sigma)^(-1). Additionally, x*x is much faster than pow(x, 2). –  Andrew Mao Feb 14 '13 at 18:35

You are missing a parantheses in the denominator of your gaussian() function. As it is right now you divide by 2 and multiply with the variance (sig^2). But that is not true and as you can see of your plots the greater variance the more narrow the gaussian is - which is wrong, it should be opposit.

So just change the gaussian() function to:

def gaussian(x, mu, sig):
return np.exp(-np.power(x - mu, 2.) / (2 * np.power(sig, 2.)))

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It also took me sometime to find the normal distribution function from scipy but I did it.

from scipy.stats import norm
import numpy as np
#initialize a normal distribution with frozen in mean=1, std. dev.= -1
rv = norm(loc = -1., scale = 1.0)
rv1 = norm(loc = 0., scale = 2.0)
rv2 = norm(loc = 2., scale = 3.0)
#similarly for the

x = np.arange(-10,10,.1)
#plot the pdf of these normal distributions
plt.plot(x, rv.pdf(x), x, rv1.pdf(x), x, rv2.pdf(x))


And you can read this tutorial for how to use other statistical distributions in python. http://docs.scipy.org/doc/scipy/reference/tutorial/stats.html

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