Multi-variate regression using NumPy in Python?

Is it possible to perform multi-variate regression in Python using NumPy?

The documentation here suggests that it is, but I cannot find any more details on the topic.

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Or you can install R and a python-R link. R can do anything.

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I'm currently using R, but I was considering making the calculation just python, for ease of sharing. –  celenius May 18 '10 at 20:47
It doesn't work any longer (I changed it to conform to Python 3, so it run; but the very first test crashed Python interpreter with no error message). Anyone knows how to update it? –  max Dec 15 '11 at 20:35

The webpage that you linked to mentions numpy.linalg.lstsq to find the vector x which minimizes `|b - Ax|`. Here is a little example of how it can be used:

First we setup some "random" data:

``````import numpy as np
c1,c2 = 5.0,2.0
x = np.arange(1,11)/10.0
y = c1*np.exp(-x)+c2*x
b = y + 0.01*max(y)*np.random.randn(len(y))
A = np.column_stack((np.exp(-x),x))
c,resid,rank,sigma = np.linalg.lstsq(A,b)
print(c)
# [ 4.96579654  2.03913202]
``````
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You might want to look into the `scipy.optimize.leastsq` function. It's rather complicated but I seem to remember that being the thing I would look to when I wanted to do a multivariate regression. (It's been a while so I could be misremembering)

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