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Implementation of the Linear Regression algorithm in Python from scratch

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Basic linear regression implementation in Python

We start off by defining the values in X and Y-axis by storing them inside two variables:

X = np.array([0,1,2,3,4,5,6,7,8,9,10])
Y = np.array([0,2,4,6,8,10,12,14,16,18,20])

We have also initialized our parameter value theta_1 to initially be equal to 4:

# initializing theta parameters
theta_0 = 0
theta_1 = 4

Based on the initial values of parameters, this is how our best fit line looks like when plotted against the actual values of X and Y-axis: alt text

Now, we will run the Gradient Descent algorithm to find the optimal values of our parameters theta_0 and theta_1 by running the algorithm 10 times and using learning rate's value to be 0.01:

iterations = 10
learning_rate = 0.01

Now, at each iteration of running Gradient Descent, we will perform the following tasks:

  • predict values for our label (Y) using our hypothesis/model: theta_0 + theta_1*x
  • compute cost function using the actual and our predicted values of Y
  • simultaneously update the values of theta_0 and theta_1
for _ in range(iterations):
	Y_predicted = generate_predicted_values(X,theta_0,theta_1)
	cost_functions.append(compute_cost_function(Y,Y_predicted))
	theta_0 = theta_0 - (float(learning_rate)*((1/m)*np.sum(Y_predicted-Y)))
	theta_1 = theta_1 - (float(learning_rate)*((1/m)*np.sum((Y_predicted-Y)*X)))

After running Gradient Descent 10 times and updating the values of theta_0 and theta_1 at each iteration, we can compare the values of our parameters and the corresponding cost functions before and after running Gradient Descent:

Before Gradient Descent:
theta_0 = 0
theta_1 = 4
cost function: 70.0

After Gradient Descent:
theta_0: -0.2709674247575545 
theta_1: 2.0631089174216615 
cost function: 0.03538502177709652

The final plot of our best fit line after finding the values of our parameters using Gradient Descent: alt text

Plotting the cost function wrt number of iterations in Gradient Descent to verify whether the cost function of our model decreases with each iteration:

alt text

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