| Authors: | Mark Culp, Kjell Johnson, George Michailides |
| Title: | [download] (2887)ada: An R Package for Stochastic Boosting |
| Reference: | Vol. 17, Issue 2, Sep 2006 Submitted 2005-07-13, Accepted 2007-07-13 |
| Type: | Article |
| Abstract: | Boosting is an iterative algorithm that combines simple classification rules with "mediocre" performance in terms of misclassification error rate to produce a highly accurate classification rule. Stochastic gradient boosting provides an enhancement which incorporates a random mechanism at each boosting step showing an improvement in performance and speed in generating the ensemble. ada is an R package that implements three popular variants of boosting, together with a version of stochastic gradient boosting. In addition, useful plots for data analytic purposes are provided along with an extension to the multi-class case. The algorithms are illustrated with synthetic and real data sets. |
| Paper: | [download] (2887)ada: An R Package for Stochastic Boosting (application/pdf, 605.8 KB) |
| Supplements: | [download] (593)ada_2.0-1.tar.gz: R source code (application/x-gzip, 916.1 KB) |
| [download] (603)v17i02.R: R example code from the paper (application/x-zip-compressed, 1.7 KB) |
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| Resources: | BibTeX | OAI |
