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KDD
2005
ACM

Robust boosting and its relation to bagging

14 years 5 months ago
Robust boosting and its relation to bagging
Several authors have suggested viewing boosting as a gradient descent search for a good fit in function space. At each iteration observations are re-weighted using the gradient of the underlying loss function. We present an approach of weight decay for observation weights which is equivalent to "robustifying" the underlying loss function. At the extreme end of decay this approach converges to Bagging, which can be viewed as boosting with a linear underlying loss function. We illustrate the practical usefulness of weight decay for improving prediction performance and present an equivalence between one form of weight decay and "Huberizing" -- a statistical method for making loss functions more robust.
Saharon Rosset
Added 30 Nov 2009
Updated 30 Nov 2009
Type Conference
Year 2005
Where KDD
Authors Saharon Rosset
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