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214 lines
7.6 KiB
Python
214 lines
7.6 KiB
Python
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"""
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Polynomial regression is a type of regression analysis that models the relationship
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between a predictor x and the response y as an mth-degree polynomial:
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y = β₀ + β₁x + β₂x² + ... + βₘxᵐ + ε
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By treating x, x², ..., xᵐ as distinct variables, we see that polynomial regression is a
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special case of multiple linear regression. Therefore, we can use ordinary least squares
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(OLS) estimation to estimate the vector of model parameters β = (β₀, β₁, β₂, ..., βₘ)
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for polynomial regression:
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β = (XᵀX)⁻¹Xᵀy = X⁺y
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where X is the design matrix, y is the response vector, and X⁺ denotes the Moore–Penrose
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pseudoinverse of X. In the case of polynomial regression, the design matrix is
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|1 x₁ x₁² ⋯ x₁ᵐ|
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X = |1 x₂ x₂² ⋯ x₂ᵐ|
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|⋮ ⋮ ⋮ ⋱ ⋮ |
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|1 xₙ xₙ² ⋯ xₙᵐ|
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In OLS estimation, inverting XᵀX to compute X⁺ can be very numerically unstable. This
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implementation sidesteps this need to invert XᵀX by computing X⁺ using singular value
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decomposition (SVD):
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β = VΣ⁺Uᵀy
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where UΣVᵀ is an SVD of X.
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References:
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- https://en.wikipedia.org/wiki/Polynomial_regression
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- https://en.wikipedia.org/wiki/Moore%E2%80%93Penrose_inverse
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- https://en.wikipedia.org/wiki/Numerical_methods_for_linear_least_squares
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- https://en.wikipedia.org/wiki/Singular_value_decomposition
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"""
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import matplotlib.pyplot as plt
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import numpy as np
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class PolynomialRegression:
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__slots__ = "degree", "params"
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def __init__(self, degree: int) -> None:
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"""
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@raises ValueError: if the polynomial degree is negative
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"""
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if degree < 0:
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raise ValueError("Polynomial degree must be non-negative")
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self.degree = degree
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self.params = None
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@staticmethod
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def _design_matrix(data: np.ndarray, degree: int) -> np.ndarray:
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"""
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Constructs a polynomial regression design matrix for the given input data. For
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input data x = (x₁, x₂, ..., xₙ) and polynomial degree m, the design matrix is
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the Vandermonde matrix
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|1 x₁ x₁² ⋯ x₁ᵐ|
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X = |1 x₂ x₂² ⋯ x₂ᵐ|
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|⋮ ⋮ ⋮ ⋱ ⋮ |
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|1 xₙ xₙ² ⋯ xₙᵐ|
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Reference: https://en.wikipedia.org/wiki/Vandermonde_matrix
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@param data: the input predictor values x, either for model fitting or for
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prediction
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@param degree: the polynomial degree m
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@returns: the Vandermonde matrix X (see above)
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@raises ValueError: if input data is not N x 1
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>>> x = np.array([0, 1, 2])
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>>> PolynomialRegression._design_matrix(x, degree=0)
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array([[1],
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[1],
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[1]])
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>>> PolynomialRegression._design_matrix(x, degree=1)
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array([[1, 0],
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[1, 1],
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[1, 2]])
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>>> PolynomialRegression._design_matrix(x, degree=2)
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array([[1, 0, 0],
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[1, 1, 1],
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[1, 2, 4]])
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>>> PolynomialRegression._design_matrix(x, degree=3)
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array([[1, 0, 0, 0],
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[1, 1, 1, 1],
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[1, 2, 4, 8]])
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>>> PolynomialRegression._design_matrix(np.array([[0, 0], [0 , 0]]), degree=3)
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Traceback (most recent call last):
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...
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ValueError: Data must have dimensions N x 1
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"""
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rows, *remaining = data.shape
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if remaining:
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raise ValueError("Data must have dimensions N x 1")
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return np.vander(data, N=degree + 1, increasing=True)
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def fit(self, x_train: np.ndarray, y_train: np.ndarray) -> None:
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"""
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Computes the polynomial regression model parameters using ordinary least squares
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(OLS) estimation:
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β = (XᵀX)⁻¹Xᵀy = X⁺y
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where X⁺ denotes the Moore–Penrose pseudoinverse of the design matrix X. This
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function computes X⁺ using singular value decomposition (SVD).
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References:
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- https://en.wikipedia.org/wiki/Moore%E2%80%93Penrose_inverse
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- https://en.wikipedia.org/wiki/Singular_value_decomposition
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- https://en.wikipedia.org/wiki/Multicollinearity
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@param x_train: the predictor values x for model fitting
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@param y_train: the response values y for model fitting
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@raises ArithmeticError: if X isn't full rank, then XᵀX is singular and β
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doesn't exist
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>>> x = np.array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10])
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>>> y = x**3 - 2 * x**2 + 3 * x - 5
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>>> poly_reg = PolynomialRegression(degree=3)
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>>> poly_reg.fit(x, y)
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>>> poly_reg.params
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array([-5., 3., -2., 1.])
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>>> poly_reg = PolynomialRegression(degree=20)
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>>> poly_reg.fit(x, y)
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Traceback (most recent call last):
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...
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ArithmeticError: Design matrix is not full rank, can't compute coefficients
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Make sure errors don't grow too large:
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>>> coefs = np.array([-250, 50, -2, 36, 20, -12, 10, 2, -1, -15, 1])
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>>> y = PolynomialRegression._design_matrix(x, len(coefs) - 1) @ coefs
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>>> poly_reg = PolynomialRegression(degree=len(coefs) - 1)
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>>> poly_reg.fit(x, y)
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>>> np.allclose(poly_reg.params, coefs, atol=10e-3)
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True
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"""
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X = PolynomialRegression._design_matrix(x_train, self.degree) # noqa: N806
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_, cols = X.shape
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if np.linalg.matrix_rank(X) < cols:
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raise ArithmeticError(
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"Design matrix is not full rank, can't compute coefficients"
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)
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# np.linalg.pinv() computes the Moore–Penrose pseudoinverse using SVD
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self.params = np.linalg.pinv(X) @ y_train
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def predict(self, data: np.ndarray) -> np.ndarray:
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"""
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Computes the predicted response values y for the given input data by
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constructing the design matrix X and evaluating y = Xβ.
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@param data: the predictor values x for prediction
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@returns: the predicted response values y = Xβ
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@raises ArithmeticError: if this function is called before the model
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parameters are fit
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>>> x = np.array([0, 1, 2, 3, 4])
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>>> y = x**3 - 2 * x**2 + 3 * x - 5
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>>> poly_reg = PolynomialRegression(degree=3)
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>>> poly_reg.fit(x, y)
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>>> poly_reg.predict(np.array([-1]))
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array([-11.])
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>>> poly_reg.predict(np.array([-2]))
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array([-27.])
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>>> poly_reg.predict(np.array([6]))
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array([157.])
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>>> PolynomialRegression(degree=3).predict(x)
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Traceback (most recent call last):
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...
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ArithmeticError: Predictor hasn't been fit yet
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"""
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if self.params is None:
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raise ArithmeticError("Predictor hasn't been fit yet")
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return PolynomialRegression._design_matrix(data, self.degree) @ self.params
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def main() -> None:
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"""
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Fit a polynomial regression model to predict fuel efficiency using seaborn's mpg
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dataset
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>>> pass # Placeholder, function is only for demo purposes
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"""
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import seaborn as sns
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mpg_data = sns.load_dataset("mpg")
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poly_reg = PolynomialRegression(degree=2)
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poly_reg.fit(mpg_data.weight, mpg_data.mpg)
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weight_sorted = np.sort(mpg_data.weight)
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predictions = poly_reg.predict(weight_sorted)
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plt.scatter(mpg_data.weight, mpg_data.mpg, color="gray", alpha=0.5)
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plt.plot(weight_sorted, predictions, color="red", linewidth=3)
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plt.title("Predicting Fuel Efficiency Using Polynomial Regression")
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plt.xlabel("Weight (lbs)")
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plt.ylabel("Fuel Efficiency (mpg)")
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plt.show()
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if __name__ == "__main__":
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import doctest
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doctest.testmod()
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main()
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