I have a data set for which I would like build a multiple linear regression model. In order to compare different independent variable I normalize them by their standard deviation. I used
sklearn.linear_model for this. I thought that this normalization would not effect the coefficient of determination, i.e.,
R2 value of the prediction; Only the parameters of the estimator would be different. I got this expected result while using
LinearRegression, however the results are different when I use
I am wondering if my assumption that
R2 value is unchanged during normalization is valid or not. If it is not valid, is there another way to achieve what I want with being able to relatively compare the importance of variables?
import numpy as np from sklearn.linear_model import ElasticNet, LinearRegression from sklearn import datasets # Load the data diabetes = datasets.load_diabetes() X = diabetes.data y = diabetes.target # Standardize data X1 = X/X.std(0) regrLinear = LinearRegression(normalize=False) regrLinear.fit(X,y) regrLinear.score(X,y) 0.51774942541329372 regrLinear.fit(X1,y) regrLinear.score(X1,y) 0.51774942541329372 regrLinear = LinearRegression(normalize=True) regrLinear.fit(X,y) regrLinear.score(X,y) 0.51774942541329372 regrEN=ElasticNet(normalize=False) regrEN.fit(X,y) regrEN.score(X,y) 0.00883477003833 regrEN.fit(X1,y) regrEN.score(X1,y) 0.48426155538537963 regrEN=ElasticNet(normalize=True) regrEN.fit(X,y) regrEN.score(X,y) 0.008834770038326667