Difference between revisions of "Class meeting for 10-605 Probability Review"

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=== Today's quiz ===
 
=== Today's quiz ===
  
* [https://qna-app.appspot.com/edit_new.html#/pages/view/aglzfnFuYS1hcHByGQsSDFF1ZXN0aW9uTGlzdBiAgIDQqZ35Cgw]
+
* [https://qna.cs.cmu.edu/#/pages/view/154]
  
 
=== Things to remember ===
 
=== Things to remember ===

Revision as of 17:45, 30 August 2017

This is one of the class meetings on the schedule for the course Machine Learning with Large Datasets 10-605 in Fall 2017.

Slides

Readings for the Class

  • Optional: Mitchell 6.1-6.10

Today's quiz

Things to remember

  • The joint probability distribution
  • Brute-force estimation of a joint distribution
  • Density estimation and how it can be used for classification
  • Naive Bayes and the conditional independence assumption
  • Asymptotic complexity of naive Bayes
  • What are streaming machine learning algorithms: ML algorithms that never load in the data