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metaEnsembleR (version 0.1.0)

Automated Intuitive Package for Meta-Ensemble Learning

Description

Extends the base classes and methods of 'caret' package for integration of base learners. The user can input the number of different base learners, and specify the final learner, along with the train-validation-test data partition split ratio. The predictions on the unseen new data is the resultant of the ensemble meta-learning of the heterogeneous learners aimed to reduce the generalization error in the predictive models. It significantly lowers the barrier for the practitioners to apply heterogeneous ensemble learning techniques in an amateur fashion to their everyday predictive problems.

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Version

Install

install.packages('metaEnsembleR')

Monthly Downloads

198

Version

0.1.0

License

GPL (>= 2)

Maintainer

Ajay Arunachalam

Last Published

November 19th, 2020

Functions in metaEnsembleR (0.1.0)

ensembler.regression

Ensemble Regressor Training & Prediction, Model Result Evaluation
ensembler.classifier

Ensemble Classifiers Training & Prediction, Model Result Evaluation