Mathematics for Machine Learning: PCA

This course is part of Mathematics for Machine Learning Specialization

Instructor: Marc Peter Deisenroth

What you'll learn

  •   Implement mathematical concepts using real-world data
  •   Derive PCA from a projection perspective
  •   Understand how orthogonal projections work
  •   Master PCA
  • Skills you'll gain

  •   Jupyter
  •   Python Programming
  •   Statistics
  •   NumPy
  •   Machine Learning
  •   Data Science
  •   Feature Engineering
  •   Calculus
  •   Dimensionality Reduction
  •   Advanced Mathematics
  •   Linear Algebra
  •   Probability & Statistics
  • There are 4 modules in this course

    At the end of this course, you'll be familiar with important mathematical concepts and you can implement PCA all by yourself. If you’re struggling, you'll find a set of jupyter notebooks that will allow you to explore properties of the techniques and walk you through what you need to do to get on track. If you are already an expert, this course may refresh some of your knowledge. The lectures, examples and exercises require: 1. Some ability of abstract thinking 2. Good background in linear algebra (e.g., matrix and vector algebra, linear independence, basis) 3. Basic background in multivariate calculus (e.g., partial derivatives, basic optimization) 4. Basic knowledge in python programming and numpy Disclaimer: This course is substantially more abstract and requires more programming than the other two courses of the specialization. However, this type of abstract thinking, algebraic manipulation and programming is necessary if you want to understand and develop machine learning algorithms.

    Inner Products

    Orthogonal Projections

    Principal Component Analysis

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