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pythonscikit-learnlinear-regression

In the LinearRegression method in sklearn, what exactly is the fit_intercept parameter doing?


In the sklearn.linear_model.LinearRegression method, there is a parameter that is fit_intercept = TRUE or fit_intercept = FALSE. I am wondering if we set it to TRUE, does it add an additional intercept column of all 1's to your dataset? If I already have a dataset with a column of 1's, does fit_intercept = FALSE account for that or does it force it to fit a zero intercept model?

Update: It seems people do not get my question. The question is, what IF I had already a column of 1's in my dataset of predictors (the 1's are for the intercept). THEN,

  1. if I use fit_intercept = FALSE, will it remove the column of 1's?

  2. if I use fit_intercept = TRUE, will it add an EXTRA column of 1's?


Solution

  • fit_intercept=False sets the y-intercept to 0. If fit_intercept=True, the y-intercept will be determined by the line of best fit.

    from sklearn.linear_model import LinearRegression
    from sklearn.datasets import make_regression
    import numpy as np
    import matplotlib.pyplot as plt
    
    bias = 100
    
    X = np.arange(1000).reshape(-1,1)
    y_true = np.ravel(X.dot(0.3) + bias)
    noise = np.random.normal(0, 60, 1000)
    y = y_true + noise
    
    lr_fi_true = LinearRegression(fit_intercept=True)
    lr_fi_false = LinearRegression(fit_intercept=False)
    
    lr_fi_true.fit(X, y)
    lr_fi_false.fit(X, y)
    
    print('Intercept when fit_intercept=True : {:.5f}'.format(lr_fi_true.intercept_))
    print('Intercept when fit_intercept=False : {:.5f}'.format(lr_fi_false.intercept_))
    
    lr_fi_true_yhat = np.dot(X, lr_fi_true.coef_) + lr_fi_true.intercept_
    lr_fi_false_yhat = np.dot(X, lr_fi_false.coef_) + lr_fi_false.intercept_
    
    plt.scatter(X, y, label='Actual points')
    plt.plot(X, lr_fi_true_yhat, 'r--', label='fit_intercept=True')
    plt.plot(X, lr_fi_false_yhat, 'r-', label='fit_intercept=False')
    plt.legend()
    
    plt.vlines(0, 0, y.max())
    plt.hlines(bias, X.min(), X.max())
    plt.hlines(0, X.min(), X.max())
    
    plt.show()
    

    This example prints:

    Intercept when fit_intercept=True : 100.32210
    Intercept when fit_intercept=False : 0.00000
    

    Visually it becomes clear what fit_intercept does. When fit_intercept=True, the line of best fit is allowed to "fit" the y-axis (close to 100 in this example). When fit_intercept=False, the intercept is forced to the origin (0, 0).

    fit_intercept in sklearn


    What happens if I include a column of ones or zeros and set fit_intercept to True or False?

    Below shows an example of how to inspect this.

    from sklearn.linear_model import LinearRegression
    from sklearn.datasets import make_regression
    import numpy as np
    import matplotlib.pyplot as plt
    
    np.random.seed(1)
    bias = 100
    
    X = np.arange(1000).reshape(-1,1)
    y_true = np.ravel(X.dot(0.3) + bias)
    noise = np.random.normal(0, 60, 1000)
    y = y_true + noise
    
    # with column of ones
    X_with_ones = np.hstack((np.ones((X.shape[0], 1)), X))
    
    for b,data in ((True, X), (False, X), (True, X_with_ones), (False, X_with_ones)):
      lr = LinearRegression(fit_intercept=b)
      lr.fit(data, y)
    
      print(lr.intercept_, lr.coef_)
    

    Take-away:

    # fit_intercept=True, no column of zeros or ones
    104.156765787 [ 0.29634031]
    # fit_intercept=False, no column of zeros or ones
    0.0 [ 0.45265361]
    # fit_intercept=True, column of zeros or ones
    104.156765787 [ 0.          0.29634031]
    # fit_intercept=False, column of zeros or ones
    0.0 [ 104.15676579    0.29634031]