I found this chunk of code on http://rosettacode.org/wiki/Multiple_regression#Python, which does a multiple linear regression in python. Print b in the following code gives you the coefficients of x1, ..., xN. However, this code is fitting the line through the origin (i.e. the resulting model does not include a constant).
All I'd like to do is the exact same thing except I do not want to fit the line through the origin, I need the constant in my resulting model.
Any idea if it's a small modification to do this? I've searched and found numerous documents on multiple regressions in python, except they are lengthy and overly complicated for what I need. This code works perfect, except I just need a model that fits through the intercept not the origin.
import numpy as np from numpy.random import random n=100 k=10 y = np.mat(random((1,n))) X = np.mat(random((k,n))) b = y * X.T * np.linalg.inv(X*X.T) print(b)
Any help would be appreciated. Thanks.