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I've been able to use the pearsonr function in sciPy to get the correlation coefficient and now want to plot the result onto a scatter plot using matplotlib.

I looked through the doc's but can't see anything to help with this.

What would be the best way to achieve this.

I'm not a mathematician so this is all very new.

There is a function in Excel that does this.


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It does not make a lot of sense to talk about a scatterplot of the correlation coefficient. Do you mean a scatterplot of your dataset instead? – NPE Dec 1 '12 at 21:59
Yes, I wasn't too sure about that. But a scatter plot of my data would show visually any correlation. So depending on the direction of the plots we could see if it is [-1-0-+1] and that would fit in with the correlation coefficient that the pearsonr function calculated? – user1869421 Dec 1 '12 at 22:02
What points do you want this function to be plotted? Could you provide more detail. – enginefree Dec 1 '12 at 23:10
Could you post the data you want to plot for the x and y for the pearson function? – enginefree Dec 1 '12 at 23:22
Thanks the data wold be x=[50,500,1500,2500] and y=[72,414,1,13] – user1869421 Dec 2 '12 at 1:20
up vote 0 down vote accepted has several examples. Here's how you'd get started with your data:

import matplotlib.pyplot as plt
fig, ax1 = plt.subplots()
x = [50,500,1500,2500];
y = [72,414,1,13]
ax1.plot(x, y, 'bo')

And here's a link to the most basic example available:

share|improve this answer
Thanks for sending the example. I'll take a look at that and at the link. – user1869421 Dec 2 '12 at 16:52

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