Publication | Open Access
Feature Selection with the<b>Boruta</b>Package
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Citations
11
References
2010
Year
Relevant VariablesData ClassificationEngineeringInformation RetrievalData ScienceData MiningPattern RecognitionMachine LearningPredictive AnalyticsRandom ProbesKnowledge DiscoveryFeature SelectionFeature EngineeringStatistical TestComputer ScienceMining MethodsFeature Construction
This article describes a <b>R</b> package <b>Boruta</b>, implementing a novel feature selection algorithm for finding emph{all relevant variables}. The algorithm is designed as a wrapper around a Random Forest classification algorithm. It iteratively removes the features which are proved by a statistical test to be less relevant than random probes. The <b>Boruta</b> package provides a convenient interface to the algorithm. The short description of the algorithm and examples of its application are presented.
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