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"""Linear regression is the most basic type of regression commonly used forpredictive analysis. The idea is pretty simple: we have a dataset and we havefeatures associated with it. Features should be chosen very cautiouslyas they determine how much our model will be able to make future predictions.We try to set the weight of these features, over many iterations, so that they bestfit our dataset. In this particular code, I had used a CSGO dataset (ADR vsRating). We try to best fit a line through dataset and estimate the parameters."""import numpy as npimport requestsdef collect_dataset():"""Collect dataset of CSGOThe dataset contains ADR vs Rating of a Player:return : dataset obtained from the link, as matrix"""response = requests.get("https://raw.githubusercontent.com/yashLadha/The_Math_of_Intelligence/""master/Week1/ADRvsRating.csv")lines = response.text.splitlines()data = []for item in lines:item = item.split(",")data.append(item)data.pop(0) # This is for removing the labels from the listdataset = np.matrix(data)return datasetdef run_steep_gradient_descent(data_x, data_y, len_data, alpha, theta):"""Run steep gradient descent and updates the Feature vector accordingly_:param data_x : contains the dataset:param data_y : contains the output associated with each data-entry:param len_data : length of the data_:param alpha : Learning rate of the model:param theta : Feature vector (weight's for our model);param return : Updated Feature's, usingcurr_features - alpha_ * gradient(w.r.t. feature)"""n = len_dataprod = np.dot(theta, data_x.transpose())prod -= data_y.transpose()sum_grad = np.dot(prod, data_x)theta = theta - (alpha / n) * sum_gradreturn thetadef sum_of_square_error(data_x, data_y, len_data, theta):"""Return sum of square error for error calculation:param data_x : contains our dataset:param data_y : contains the output (result vector):param len_data : len of the dataset:param theta : contains the feature vector:return : sum of square error computed from given feature's"""prod = np.dot(theta, data_x.transpose())prod -= data_y.transpose()sum_elem = np.sum(np.square(prod))error = sum_elem / (2 * len_data)return errordef run_linear_regression(data_x, data_y):"""Implement Linear regression over the dataset:param data_x : contains our dataset:param data_y : contains the output (result vector):return : feature for line of best fit (Feature vector)"""iterations = 100000alpha = 0.0001550no_features = data_x.shape[1]len_data = data_x.shape[0] - 1theta = np.zeros((1, no_features))for i in range(iterations):theta = run_steep_gradient_descent(data_x, data_y, len_data, alpha, theta)error = sum_of_square_error(data_x, data_y, len_data, theta)print(f"At Iteration {i + 1} - Error is {error:.5f}")return thetadef mean_absolute_error(predicted_y, original_y):"""Return sum of square error for error calculation:param predicted_y : contains the output of prediction (result vector):param original_y : contains values of expected outcome:return : mean absolute error computed from given feature's"""total = sum(abs(y - predicted_y[i]) for i, y in enumerate(original_y))return total / len(original_y)def main():"""Driver function"""data = collect_dataset()len_data = data.shape[0]data_x = np.c_[np.ones(len_data), data[:, :-1]].astype(float)data_y = data[:, -1].astype(float)theta = run_linear_regression(data_x, data_y)len_result = theta.shape[1]print("Resultant Feature vector : ")for i in range(len_result):print(f"{theta[0, i]:.5f}")if __name__ == "__main__":main()
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