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Example of Gradient Descent

This is the example of the gradient descent algorithm, which may be used to solve a linear regression problem.

Description

This code demonstrates how a gradient descent search may be used to solve the linear regression problem of fitting a line to a set of points. In this problem, we wish to model a set of points using a line. The line model is defined by two parameters - the line's slope m, and y-intercept b. Gradient descent attemps to find the best values for these parameters, subject to an error function.

The code contains a main function called run. This function defines a set of parameters used in the gradient descent algorithm including an initial guess of the line slope and y-intercept, the learning rate to use, and the number of iterations to run gradient descent for.

initial_b = 0 # initial y-intercept guess
initial_m = 0 # initial slope guess
num_iterations = 50

Using these parameters a gradient descent search is executed on a sample data set of 100 ponts.

Execution

The code is running by Python (version 3.6).

To run the example, simply run the gradient_descent.py file using Python

python gradient_descent.py

The output will look like this

Starting gradient descent at b = 0, m = 0, error = 5565.107834483211
Running...
After 50 iterations b = 0.03207192079925886, m = 1.4788617415595229, error = 112.64886099447925