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LinkedIn Learning

Machine Learning Foundations: Probability

via LinkedIn Learning

Overview

Get an in-depth introduction to probability, find out why it’s a prerequisite for machine learning, and learn how to use it to design and implement machine learning algorithms.

Syllabus

Introduction
  • Probability for machine learning
  • What you should know
1. Introduction to Probability
  • Defining probability
  • Applications of probability in ML
  • Sample space and events
  • Random variables
  • Examples of probability
2. The Rules of Probability
  • Probability of an event
  • The sum rule
  • The product rule
  • The sum rule extended
  • Conditional probability
  • Total probability
3. The Joint and Marginal Probability
  • Joint and marginal probability
  • Joint probability tables
  • The chain rule for probability
4. Discrete Probability Distributions
  • Probability distributions
  • Histograms and probability
  • Discrete probability distribution
  • The binomial distribution
  • The Bernoulli distribution
  • The Poisson distribution
5. Continuous Probability Distributions
  • The continuous probability distribution
  • Central limit theorem
  • The law of large numbers
6. The Bayes' Theorem
  • Introduction to Bayes' theorem
  • Example of Bayes' theorem in practice
  • Naive Bayes' clasifier
Conclusion
  • Next steps

Taught by

Terezija Semenski

Reviews

4.6 rating at LinkedIn Learning based on 185 ratings

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