Difference between revisions of "10-601 Ensembles 1"

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You should know how to implement  these ensemble methods, and what their relative advantages and disadvantages are:
 
You should know how to implement  these ensemble methods, and what their relative advantages and disadvantages are:
* Bagging
+
* (Ziv - not sure if can do in one lecture if we do boosting) Bagging
 
* Boosting
 
* Boosting
 
* Stacking
 
* Stacking
 
* Multilevel Stacking
 
* Multilevel Stacking
* The "bucket of models" classifier
+
* (Ziv - not sure if I will do this) The "bucket of models" classifier
 +
* Random forest

Revision as of 09:55, 12 August 2014

This a lecture used in the Syllabus for Machine Learning 10-601 in Fall 2014

Slides

Readings

Summary

You should know how to implement these ensemble methods, and what their relative advantages and disadvantages are:

  • (Ziv - not sure if can do in one lecture if we do boosting) Bagging
  • Boosting
  • Stacking
  • Multilevel Stacking
  • (Ziv - not sure if I will do this) The "bucket of models" classifier
  • Random forest