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On sparse optimal regression trees

Rafael Blanquero, Emilio Carrizosa, Cristina Molero-Río, Dolores Romero Morales

2021European Journal of Operational Research13 citationsDOIOpen Access PDF

Abstract

In this paper, we model an optimal regression tree through a continuous optimization problem, where a compromise between prediction accuracy and both types of sparsity, namely local and global, is sought. Our approach can accommodate important desirable properties for the regression task, such as cost-sensitivity and fairness. Thanks to the smoothness of the predictions, we can derive local explanations on the continuous predictor variables. The computational experience reported shows the outperformance of our approach in terms of prediction accuracy against standard benchmark regression methods such as CART, OLS and LASSO. Moreover, the scalability of our approach with respect to the size of the training sample is illustrated.

Topics & Concepts

SmoothnessRegressionBenchmark (surveying)Computer scienceLasso (programming language)Tree (set theory)Regression analysisSensitivity (control systems)ScalabilityMachine learningMathematical optimizationArtificial intelligenceMathematicsStatisticsDatabaseEngineeringWorld Wide WebElectronic engineeringMathematical analysisGeographyGeodesyExplainable Artificial Intelligence (XAI)Machine Learning and Data ClassificationImbalanced Data Classification Techniques
On sparse optimal regression trees | Litcius