# -------------------------------------------- # CITATION file created with {cffr} R package # See also: https://docs.ropensci.org/cffr/ # -------------------------------------------- cff-version: 1.2.0 message: 'To cite package "interpret" in publications use:' type: software license: MIT title: 'interpret: Fit Interpretable Machine Learning Models' version: 0.1.34 doi: 10.32614/CRAN.package.interpret abstract: Package for training interpretable machine learning models. Historically, the most interpretable machine learning models were not very accurate, and the most accurate models were not very interpretable. Microsoft Research has developed an algorithm called the Explainable Boosting Machine (EBM) which has both high accuracy and interpretable characteristics. EBM uses machine learning techniques like bagging and boosting to breathe new life into traditional GAMs (Generalized Additive Models). This makes them as accurate as random forests and gradient boosted trees, and also enhances their intelligibility and editability. Details on the EBM algorithm can be found in the paper by Rich Caruana, Yin Lou, Johannes Gehrke, Paul Koch, Marc Sturm, and Noemie Elhadad (2015, ). authors: - family-names: Jenkins given-names: Samuel - family-names: Nori given-names: Harsha - family-names: Koch given-names: Paul - family-names: Caruana given-names: Rich email: interpretml@outlook.com repository: https://CRAN.R-project.org/package=interpret repository-code: https://github.com/interpretml/interpret url: https://github.com/interpretml/interpret date-released: '2024-11-28' contact: - family-names: Caruana given-names: Rich email: interpretml@outlook.com