autoBagging: Learning to Rank Bagging Workflows with Metalearning

dc.contributor.author Pinto,F en
dc.contributor.author Vítor Manuel Cerqueira en
dc.contributor.author Carlos Manuel Soares en
dc.contributor.author João Mendes Moreira en
dc.date.accessioned 2018-01-19T17:17:22Z
dc.date.available 2018-01-19T17:17:22Z
dc.date.issued 2017 en
dc.description.abstract Machine Learning (ML) has been successfully applied to a wide range of domains and applications. One of the techniques behind most of these successful applications is Ensemble Learning (EL), the field of ML that gave birth to methods such as Random Forests or Boosting. The complexity of applying these techniques together with the market scarcity on ML experts, has created the need for systems that enable a fast and easy drop-in replacement for ML libraries. Automated machine learning (autoML) is the field of ML that attempts to answers these needs. We propose autoBagging, an autoML system that automatically ranks 63 bagging workflows by exploiting past performance and metalearning. Results on 140 classification datasets from the OpenML platform show that autoBagging can yield better performance than the Average Rank method and achieve results that are not statistically different from an ideal model that systematically selects the best workflow for each dataset. For the purpose of reproducibility and generalizability, autoBagging is publicly available as an R package on CRAN. en
dc.identifier.uri http://repositorio.inesctec.pt/handle/123456789/7125
dc.language eng en
dc.relation 6211 en
dc.relation 5450 en
dc.relation 5001 en
dc.rights info:eu-repo/semantics/openAccess en
dc.title autoBagging: Learning to Rank Bagging Workflows with Metalearning en
dc.type conferenceObject en
dc.type Publication en
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