Publication | Open Access
Label Ranking Forests
33
Citations
25
References
2016
Year
Ranking AlgorithmEngineeringInformation RetrievalData ScienceData MiningPattern RecognitionMachine LearningLabel RankingKnowledge DiscoveryLearning To RankDecision Tree LearningMining MethodsDecision TreesEnsemble MethodsEnsemble AlgorithmLabel Ranking Forests
Abstract The problem of Label Ranking is receiving increasing attention from several research communities. The algorithms that have been developed/adapted to treat rankings of a fixed set of labels as the target object, including several different types of decision trees (DT). One DT‐based algorithm, which has been very successful in other tasks but which has not been adapted for label ranking is the Random Forests (RF) algorithm. RFs are an ensemble learning method that combines different trees obtained using different randomization techniques. In this work, we propose an ensemble of decision trees for Label Ranking, based on Random Forests, which we refer to as Label Ranking Forests (LRF). Two different algorithms that learn DT for label ranking are used to obtain the trees. We then compare and discuss the results of LRF with standalone decision tree approaches. The results indicate that the method is highly competitive.
| Year | Citations | |
|---|---|---|
Page 1
Page 1