Quadratic programming algorithms for ensemble models

Jie Xu,J Brian Gray

Periodicals(2013)

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摘要
AbstractEnsemble models, such as bagging, random forests, and boosting, have better predictive accuracy than single classifiers. These ensembles typically consist of hundreds of single classifiers, which make future predictions and model interpretation much more difficult than for single classifiers. Recently, research efforts have been directed toward improving ensembles by reducing their size while increasing or maintaining their predictive accuracy. In this article, we review recently proposed methods based on quadratic programming techniques for accomplishing these goals. WIREs Comput Stat 2013, 5:41-47. doi: 10.1002/wics.1237
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关键词
bagging, boosting, decision tree, ensemble pruning, predictivemodel, random forests
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