XAIRE: An ensemble-based methodology for determining the relative importance of variables in regression tasks. Application to a hospital emergency department.

Journal: Artificial intelligence in medicine
Published Date:

Abstract

Nowadays it is increasingly important in many applications to understand how different factors influence a variable of interest in a predictive modeling process. This task becomes particularly important in the context of Explainable Artificial Intelligence. Knowing the relative impact of each variable on the output allows us to acquire more information about the problem and about the output provided by a model. This paper proposes a new methodology, XAIRE, that determines the relative importance of input variables in a prediction environment, considering multiple prediction models in order to increase generality and avoid bias inherent in a particular learning algorithm. Concretely, we present an ensemble-based methodology that promotes the aggregation of results from several prediction methods to obtain a relative importance ranking. Also, statistical tests are considered in the methodology in order to reveal significant differences between the relative importance of the predictor variables. As a case study, XAIRE is applied to the arrival of patients in a Hospital Emergency Department, which has resulted in one of the largest sets of different predictor variables in the literature. Results show the extracted knowledge related to the relative importance of the predictors involved in the case study.

Authors

  • A J Rivera
    Computer Science Department, University of Jaén, Spain. Electronic address: arivera@ujaen.es.
  • J Cobo Muñoz
    Emergency Department, University Hospital of Jaén, Spain. Electronic address: jocomu001@gmail.com.
  • M D Pérez-Goody
    Computer Science Department, University of Jaén, Spain. Electronic address: lperez@ujaen.es.
  • B Sáenz de San Pedro
    Emergency Department, University Hospital of Jaén, Spain. Electronic address: blanca.saenzdesanpedro@gmail.com.
  • F Charte
    Computer Science Department, University of Jaén, Spain. Electronic address: fcharte@ujaen.es.
  • D Elizondo
    Department of Computer Science and Informatics, De Montfort University, UK. Electronic address: elizondo@dmu.ac.uk.
  • C Rodriguez
    Department of Prevention, Diagnosis and Treatment of Infections, Henri-Mondor Hospital, APHP, Université Paris-Est Créteil, IMRB, INSERM U955, Créteil, France.
  • M L Abolafia
    Emergency Department, University Hospital of Jaén, Spain. Electronic address: abolafiaml@gmail.com.
  • A Perea
    Emergency Department, University Hospital of Jaén, Spain. Electronic address: alvaroperea.65@gmail.com.
  • M J Del Jesus
    Computer Science Department, University of Jaén, Spain. Electronic address: mjjesus@ujaen.es.