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April 28, 2021 12:51
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Linear-regression-txt
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import sys | |
import numpy as np | |
import pandas as pd | |
import matplotlib.pyplot as plt | |
X = 2 * np.random.rand(100,1) | |
y = 4 + 3 * X + np.random.rand(100,1) | |
plt.scatter(X,y) | |
# np.c_[constants, vector] add (prepend a column) x0 = 1 to each instance | |
# np.ones returns a 'matrix' of '1's of the given shape | |
X_b = np.c_[np.ones((100, 1)), X] | |
# <nparray>.T same thing as .transpose | |
theta_best = np.linalg.inv(X_b.T.dot(X_b)).dot(X_b.T).dot(y) | |
print(theta_best) | |
Ideally the answer is 4,3 but the noise makes it imposible to recover the exact parameters | |
Now we can make predictions: | |
X_new = np.array([[0],[2]]) | |
X_new_b = np.c_[np.ones((2, 1)), X_new] | |
y_predict = X_new_b.dot(theta_best) | |
print("Prediction:", y_predict) | |
plt.plot(X_new, y_predict, "r-") | |
plt.plot(X, y, "b.") | |
plt.axis([0, 2, 0, 15]) | |
plt.show() | |
print(np.c_[np.ones((2, 1)), X_new]) |
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