Ridge Regression with Scikit-Learn

1) Ridge Regression with Scikit-Learn using a closed-form solution:

from sklearn.linar_model import Ridge
ridge_reg = Ridge(alpha=1, solver=”cholesky”)
ridge_reg.fit(X, y)
ridge_reg.predict([[1.6]]) 

2) Ridge Regression with Scikit-Learn using Stochastic Gradient Descent:

sgd_reg = SGDRegressor (penalty=”08″)
sgd_reg.fit(X, y.ravel())
sgd_reg.predict([[1.6]])

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