Probability Must-Knows for Machine Learning | Math for ML (Part 1)
Want to start learning machine learning? Follow this series and supplement your learning with Brilliant. To try everything Brilliant has to offer—free—for a full 30 days, visit https://brilliant.org/KylieYing/ . You’ll also get 20% off an annual premium subscription. This video provides an introductory crash course to probability, with the intention of teaching concepts that are foundational to machine learning. Timestamps 00:00 Introduction 00:44 Defining Probability 06:31 Conditions of Probability 10:39 Joint Probability 14:37 Conditional Probability 18:25 Independence 20:12 Sum Rule 22:40 Law of Total Probability 25:30 Law of Total Probability Example 28:40 Bayes' Rule 32:17 Bayes' Rule Example Feel free to leave any questions. Please consider subscribing if you liked this video: https://www.youtube.com/c/ycubed?sub_... Thanks for watching everyone! ~~~~~~~~~~~~~~~~~~~~~~~~ Follow me on Instagram: / kylieyying Follow me on Twitter: / kylieyying Check out my website: https://www.kylieying.com

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