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Boosting through optimization of margin distributions

Shen, Chunhua; Li, Hanxi

Description

Boosting has been of great interest recently in the machine learning community because of the impressive performance for classifi- cation and regression problems. The success of boosting algorithms may be interpreted in terms of the margin theory. Recently, it has been shown that generalization error of classifiers can be obtained by explicitly taking the margin distribution of the training data into account. Most of the current boosting algorithms in practice usually optimize a convex loss...[Show more]

dc.contributor.authorShen, Chunhua
dc.contributor.authorLi, Hanxi
dc.date.accessioned2015-12-10T23:15:41Z
dc.identifier.issn1045-9227
dc.identifier.urihttp://hdl.handle.net/1885/64748
dc.description.abstractBoosting has been of great interest recently in the machine learning community because of the impressive performance for classifi- cation and regression problems. The success of boosting algorithms may be interpreted in terms of the margin theory. Recently, it has been shown that generalization error of classifiers can be obtained by explicitly taking the margin distribution of the training data into account. Most of the current boosting algorithms in practice usually optimize a convex loss function and do not make use of the margin distribution. In this brief, we design a new boosting algorithm, termed margin-distribution boosting (MDBoost), which directly maximizes the average margin and minimizes the margin variance at the same time. This way the margin distribution is optimized. A totally corrective optimization algorithm based on column generation is proposed to implement MDBoost. Experiments on various data sets show that MDBoost outperforms AdaBoost and LPBoost in most cases.
dc.publisherInstitute of Electrical and Electronics Engineers (IEEE Inc)
dc.sourceIEEE Transactions on Neural Networks
dc.subjectKeywords: AdaBoost; Boosting algorithm; Column generation; Data sets; Generalization Error; Loss functions; Machine learning communities; Margin theory; Optimization algorithms; Regression problem; Training data; Algorithms; Optimization; Adaptive boosting; algorit AdaBoost; Boosting; Column generation; Margin distribution
dc.titleBoosting through optimization of margin distributions
dc.typeJournal article
local.description.notesImported from ARIES
local.identifier.citationvolume21
dc.date.issued2010
local.identifier.absfor170205 - Neurocognitive Patterns and Neural Networks
local.identifier.absfor080108 - Neural, Evolutionary and Fuzzy Computation
local.identifier.ariespublicationf2965xPUB992
local.type.statusPublished Version
local.contributor.affiliationShen, Chunhua, College of Engineering and Computer Science, ANU
local.contributor.affiliationLi, Hanxi, College of Engineering and Computer Science, ANU
local.description.embargo2037-12-31
local.bibliographicCitation.issue4
local.bibliographicCitation.startpage659
local.bibliographicCitation.lastpage666
local.identifier.doi10.1109/TNN.2010.2040484
local.identifier.absseo970108 - Expanding Knowledge in the Information and Computing Sciences
dc.date.updated2016-02-24T08:34:46Z
local.identifier.scopusID2-s2.0-77950861838
local.identifier.thomsonID000276257000010
CollectionsANU Research Publications

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