# Linear regression with matplotlib / numpy

still a Python beginner.

I'm trying to generate a linear regression on a scatter plot I have generated, however my data is in list format, and all of the examples I can find of using 'polyfit' require using 'arange'. Arange doesn't accept lists though. I have searched high and low about how to convert a list to an array and nothing seems clear. Am I missing something?

Following on, how best can I use my list of integers as inputs to the 'polyfit'

here is the polyfit example I am following:

``````from pylab import *

x = arange(data)
y = arange(data)

m,b = polyfit(x, y, 1)

plot(x, y, 'yo', x, m*x+b, '--k')
show()
``````

J

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## 3 Answers

arange generates lists (well, numpy arrays); type "help(arange)" for the details. You don't need to call it on existing lists.

``````>>> x = [1,2,3,4]
>>> y = [3,5,7,9]
>>>
>>> m,b = polyfit(x, y, 1)
>>> m
2.0000000000000009
>>> b
0.99999999999999833
``````

I should add that I tend to use poly1d here rather than write out "m*x+b" and the higher-order equivalents, so my version of your code would look something like this:

``````x = [1,2,3,4]
y = [3,5,7,10] # 10, not 9, so the fit isn't perfect

fit = polyfit(x,y,1)
fit_fn = poly1d(fit) # fit_fn is now a function which takes in x and returns an estimate for y

plot(x,y, 'yo', x, fit_fn(x), '--k')
xlim(0, 5)
ylim(0, 12)
``````
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This worked very nicely. Thanks for the help. –  Dingo May 27 '11 at 6:52

Another quick and dirty answer is that you can just convert your list to an array using:

import numpy as np np.asarray(listname)

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This code:

``````from scipy.stats import linregress

linregress(x,y) #x and y are arrays or lists.
``````

gives out a list with the following:

slope : float
slope of the regression line
intercept : float
intercept of the regression line
r-value : float
correlation coefficient
p-value : float
two-sided p-value for a hypothesis test whose null hypothesis is that the slope is zero
stderr : float
Standard error of the estimate

Source

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