Difference between revisions of "10-601 Ensembles 1"

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* [http://dl.acm.org/citation.cfm?id=743935 Ensemble Methods in Machine Learning], Tom Dietterich
 
* [http://dl.acm.org/citation.cfm?id=743935 Ensemble Methods in Machine Learning], Tom Dietterich
  
=== Take home message ===
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=== Summary  ===
  
* Overfitting
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You should know how to implement  these ensemble methods, and what their relative advantages and disadvantages are:
** kNN
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* Bagging
** Regression
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* Boosting
 
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* Stacking
* Bias-variance decomposition
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* Multilevel Stacking
 
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* The "bucket of models" classifier
* Structural risk minimization
 
 
 
* The battle against overfitting
 
** Cross validation
 
** Regularization
 
** Feature selection
 

Revision as of 09:19, 15 October 2013

Slides

Readings

Summary

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

  • Bagging
  • Boosting
  • Stacking
  • Multilevel Stacking
  • The "bucket of models" classifier