Litcius/Paper detail

A note on the interpretation of tree‐based regression models

Anna Gottard, Giulia Vannucci, Giovanni M. Marchetti

2020Biometrical Journal19 citationsDOI

Abstract

Tree-based models are a popular tool for predicting a response given a set of explanatory variables when the regression function is characterized by a certain degree of complexity. Sometimes, they are also used to identify important variables and for variable selection. We show that if the generating model contains chains of direct and indirect effects, then the typical variable importance measures suggest selecting as important mainly the background variables, which have a strong indirect effect, disregarding the variables that directly influence the response. This is attributable mainly to the variable choice in the first steps of the algorithm selecting the splitting variable and to the greedy nature of such search. This pitfall could be relevant when using tree-based algorithms for understanding the underlying generating process, for population segmentation and for causal inference.

Topics & Concepts

Variable (mathematics)Feature selectionTree (set theory)MathematicsCausal inferenceRegression analysisInterpretation (philosophy)PopulationVariablesEconometricsStatisticsInferenceComputer scienceArtificial intelligenceProgramming languageSociologyDemographyMathematical analysisStatistical Methods and InferenceBayesian Modeling and Causal InferenceStatistical Methods and Bayesian Inference