Ensembles of Multi-Objective Decision Trees

@inproceedings{Kocev2007EnsemblesOM,
  title={Ensembles of Multi-Objective Decision Trees},
  author={D. Kocev and C. Vens and Jan Struyf and S. Dzeroski},
  booktitle={ECML},
  year={2007}
}
  • D. Kocev, C. Vens, +1 author S. Dzeroski
  • Published in ECML 2007
  • Computer Science
  • Ensemble methods are able to improve the predictive performance of many base classifiers. [...] Key Result Moreover, ensembles of MODTs have smaller model size and are faster to learn than ensembles of single-objective decision trees.Expand Abstract
    144 Citations

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