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125 lines
3.9 KiB
Python
125 lines
3.9 KiB
Python
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"""
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Calculate joint probability distribution
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https://en.wikipedia.org/wiki/Joint_probability_distribution
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"""
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def joint_probability_distribution(
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x_values: list[int],
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y_values: list[int],
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x_probabilities: list[float],
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y_probabilities: list[float],
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) -> dict:
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"""
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>>> joint_distribution = joint_probability_distribution(
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... [1, 2], [-2, 5, 8], [0.7, 0.3], [0.3, 0.5, 0.2]
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... )
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>>> from math import isclose
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>>> isclose(joint_distribution.pop((1, 8)), 0.14)
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True
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>>> joint_distribution
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{(1, -2): 0.21, (1, 5): 0.35, (2, -2): 0.09, (2, 5): 0.15, (2, 8): 0.06}
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"""
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return {
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(x, y): x_prob * y_prob
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for x, x_prob in zip(x_values, x_probabilities)
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for y, y_prob in zip(y_values, y_probabilities)
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}
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# Function to calculate the expectation (mean)
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def expectation(values: list, probabilities: list) -> float:
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"""
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>>> from math import isclose
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>>> isclose(expectation([1, 2], [0.7, 0.3]), 1.3)
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True
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"""
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return sum(x * p for x, p in zip(values, probabilities))
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# Function to calculate the variance
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def variance(values: list[int], probabilities: list[float]) -> float:
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"""
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>>> from math import isclose
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>>> isclose(variance([1,2],[0.7,0.3]), 0.21)
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True
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"""
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mean = expectation(values, probabilities)
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return sum((x - mean) ** 2 * p for x, p in zip(values, probabilities))
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# Function to calculate the covariance
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def covariance(
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x_values: list[int],
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y_values: list[int],
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x_probabilities: list[float],
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y_probabilities: list[float],
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) -> float:
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"""
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>>> covariance([1, 2], [-2, 5, 8], [0.7, 0.3], [0.3, 0.5, 0.2])
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-2.7755575615628914e-17
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"""
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mean_x = expectation(x_values, x_probabilities)
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mean_y = expectation(y_values, y_probabilities)
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return sum(
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(x - mean_x) * (y - mean_y) * px * py
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for x, px in zip(x_values, x_probabilities)
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for y, py in zip(y_values, y_probabilities)
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)
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# Function to calculate the standard deviation
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def standard_deviation(variance: float) -> float:
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"""
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>>> standard_deviation(0.21)
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0.458257569495584
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"""
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return variance**0.5
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if __name__ == "__main__":
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from doctest import testmod
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testmod()
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# Input values for X and Y
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x_vals = input("Enter values of X separated by spaces: ").split()
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y_vals = input("Enter values of Y separated by spaces: ").split()
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# Convert input values to integers
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x_values = [int(x) for x in x_vals]
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y_values = [int(y) for y in y_vals]
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# Input probabilities for X and Y
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x_probs = input("Enter probabilities for X separated by spaces: ").split()
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y_probs = input("Enter probabilities for Y separated by spaces: ").split()
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assert len(x_values) == len(x_probs)
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assert len(y_values) == len(y_probs)
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# Convert input probabilities to floats
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x_probabilities = [float(p) for p in x_probs]
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y_probabilities = [float(p) for p in y_probs]
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# Calculate the joint probability distribution
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jpd = joint_probability_distribution(
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x_values, y_values, x_probabilities, y_probabilities
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)
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# Print the joint probability distribution
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print(
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"\n".join(
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f"P(X={x}, Y={y}) = {probability}" for (x, y), probability in jpd.items()
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)
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)
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mean_xy = expectation(
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[x * y for x in x_values for y in y_values],
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[px * py for px in x_probabilities for py in y_probabilities],
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)
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print(f"x mean: {expectation(x_values, x_probabilities) = }")
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print(f"y mean: {expectation(y_values, y_probabilities) = }")
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print(f"xy mean: {mean_xy}")
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print(f"x: {variance(x_values, x_probabilities) = }")
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print(f"y: {variance(y_values, y_probabilities) = }")
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print(f"{covariance(x_values, y_values, x_probabilities, y_probabilities) = }")
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print(f"x: {standard_deviation(variance(x_values, x_probabilities)) = }")
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print(f"y: {standard_deviation(variance(y_values, y_probabilities)) = }")
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