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Multi-target Random Forest implementation that can mix both classification and regression tasks

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morfist: mixed-output-rf

Multi-target Random Forest implementation that can mix both classification and regression tasks.

Morfist implements the Random Forest algorithm (Breiman, 2001) with support for mixed-task multi-task learning, i.e., it is possible to train the model on any number of classification tasks and regression tasks, simultaneously. Morfist's mixed multi-task learning implementation follows that proposed by Linusson (2013).

  • Breiman, L. (2001). Random forests. Machine learning, 45(1), 5-32.
  • Linusson, H. (2013). Multi-output random forests.

TODO:

  • Some amount of documentation.
  • Speed up the learning algorithm implementation (morfist is currently much slower than the Random Forest implementation available in scikit-learn)

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