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I intend for part of a program I'm writing to automatically generate Gaussian distributions of various statistics over multiple raw text sources, however I'm having some issues generating the graphs as per the guide at:

python pylab plot normal distribution

The general gist of the plot code is as follows.

import numpy as np
import matplotlib.mlab as mlab
import matplotlib.pyplot as pyplot

meanAverage = 222.89219487179491    # typical value calculated beforehand
standardDeviation = 3.8857889432054091    # typical value calculated beforehand

x = np.linspace(-3,3,100)

All it does is produce a rather flat looking and useless y = 0 line! Can anyone see what the problem is here?


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up vote 3 down vote accepted

It looks like you made a few small but significant errors. You either are choosing your x vector wrong or you swapped your stddev and mean. Since your mean is at 222, you probably want your x vector in this area, maybe something like 150 to 300. This way you get all the good stuff, right now you are looking at -3 to 3 which is at the tail of the distribution. Hope that helps.

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Ahh! That did it! Well spotted and thank you! – James Turner Oct 14 '12 at 20:06

I see that, for the *args which are sending meanAverage, standardDeviation, the correct thing to be sent is:

mu : a numdims array of means of a

sigma : a numdims array of atandard deviation of a

Does this help?

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Annoyingly, all object types I've thrown at it have'nt worked... There must be a simpler way than this. – James Turner Oct 13 '12 at 23:21

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