Module 2 - Maths for Machine Learning - Part Two

Difficulty: Beginner
Duration: 15 minutes and 56 seconds
Students: 1,615

To design effective machine learning, you’ll need a firm grasp of the mathematics that support it. This lesson is part two of the module on maths for machine learning. It focuses on how to use linear regression in multiple dimensions, interpret data structures from the geometrical perspective of linear regression, and discuss how you can use vector subtraction. We’ll finish the lesson off by discussing how you can use visualized vectors to solve problems in machine learning, and how you can use matrices and multidimensional linear regression. 

Part one of this module can be found here and provides an intro to the mathematics of machine learning, and then explores common functions and useful algebra for machine learning, the quadratic model, logarithms and exponents, linear regression, calculus, and notation.

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