# Multiple linear regression python

I use multiple linear regression, I have one dependant variable (var) and several independant variables `(varM1, varM2,...)` I use this code in python:

``````z=array([varM1, varM2, varM3],int32)
n=max(shape(var))
X = vstack([np.ones(n), z]).T
a = np.linalg.lstsq(X, var)[0]
``````

How can I calculate the R-square change for every variable with python ? I would like to see how the regression changes if I add or remove predictor variables.

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What is the `var` variable? –  Bill Jul 18 '13 at 15:55
it is the dependant variable. in my case, it is a concentration –  user2050187 Jul 22 '13 at 6:32

If the broadcasting is correct along the way the following should give you the correlation coefficient `R`:

``````R = np.sqrt( ((var - X.dot(a))**2).sum() )
``````

One full example of multi-variate regression:

``````import numpy as np

x1 = np.array([1,2,3,4,5,6])
x2 = np.array([1,1.5,2,2.5,3.5,6])
x3 = np.array([6,5,4,3,2,1])
y = np.random.random(6)

nvar = 3
one = np.ones(x1.shape)
A = np.vstack((x1,one,x2,one,x3,one)).T.reshape(nvar,x1.shape[0],2)

for i,Ai in enumerate(A):
a = np.linalg.lstsq(Ai,y)[0]
R = np.sqrt( ((y - Ai.dot(a))**2).sum() )
print R
``````
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There is no such variable shape, so this implementation does not run. –  rjurney Nov 16 '13 at 5:22
@rjurney it does run. `shape` actually is not a variable but an attribute of the `ndarray` object... check if you have such an object... –  Saullo Castro Nov 16 '13 at 10:14