autoBagging
R package autoBagging: Learning to Rank Bagging Workflows with Metalearning. A framework for automated machine learning. Concretely, the focus is on the optimisation of bagging workflows. A bagging workflows is composed by three phases: (i) generation: which and how many predictive models to learn; (ii) pruning: after learning a set of models, the worst ones are cut off from the ensemble; and (iii) integration: how the models are combined for predicting a new observation. autoBagging optimises these processes by combining metalearning and a learning to rank approach to learn from metadata. It automatically ranks 63 bagging workflows by exploiting past performance and dataset characterization. A complete description of the method can be found in: Pinto, F., Cerqueira, V., Soares, C., Mendes-Moreira, J. (2017): ”autoBagging: Learning to Rank Bagging Workflows with Metalearning” arXiv preprint arXiv:1706.09367.
References in zbMATH (referenced in 2 articles )
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- Pinto, F., Cerqueira, V., Soares, C., Mendes-Moreira, J.: autoBagging: Learning to Rank Bagging Workflows with Metalearning (2017) arXiv