Bagging and the Bayesian Bootstrap

dc.contributor.author

Clyde, M

dc.contributor.author

Lee, HK

dc.contributor.editor

Jaakkola, T

dc.contributor.editor

Richardson, T

dc.date.accessioned

2016-03-31T03:51:43Z

dc.date.issued

2001

dc.description.abstract

Bagging is a method of obtaining more ro- bust predictions when the model class under consideration is unstable with respect to the data, i.e., small changes in the data can cause the predicted values to change significantly. In this paper, we introduce a Bayesian ver- sion of bagging based on the Bayesian boot- strap. The Bayesian bootstrap resolves a the- oretical problem with ordinary bagging and often results in more efficient estimators. We show how model averaging can be combined within the Bayesian bootstrap and illustrate the procedure with several examples.

dc.identifier

http://www.gatsby.ucl.ac.uk/aistats/aistats2001/files/clyde129.ps

dc.identifier.uri

https://hdl.handle.net/10161/11773

dc.publisher

Morgan Kaufman Publishers

dc.relation.ispartof

Artificial Intelligence and Statistics

dc.title

Bagging and the Bayesian Bootstrap

dc.type

Journal article

duke.contributor.orcid

Clyde, M|0000-0002-3595-1872

pubs.author-url

http://www.gatsby.ucl.ac.uk/aistats/aistats2001/files/clyde129.ps

pubs.begin-page

169

pubs.end-page

174

pubs.organisational-group

Duke

pubs.organisational-group

Statistical Science

pubs.organisational-group

Trinity College of Arts & Sciences

pubs.volume

8

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