Davila-Pena Laura, García-Jurado Ignacio, Casas-Méndez Balbina
MODESTYA Research Group, Department of Statistics, Mathematical Analysis and Optimisation and IMAT, Faculty of Mathematics, University of Santiago de Compostela, Campus Vida, Santiago de Compostela 15782, Spain.
MODES Research Group, Department of Mathematics and CITIC, Faculty of Computer Science, University of A Coruña, Campus de Elviña, A Coruña 15071, Spain.
Eur J Oper Res. 2022 Jun 1;299(2):631-641. doi: 10.1016/j.ejor.2021.09.027. Epub 2021 Sep 24.
This paper deals with an important subject in classification problems addressed by machine learning techniques: the evaluation of the influence of each of the features on the classification of individuals. Specifically, a measure of that influence is introduced using the Shapley value of cooperative games. In addition, an axiomatic characterisation of the proposed measure is provided based on properties of efficiency and balanced contributions. Furthermore, some experiments have been designed in order to validate the appropriate performance of such measure. Finally, the methodology introduced is applied to a sample of COVID-19 patients to study the influence of certain demographic or risk factors on various events of interest related to the evolution of the disease.
评估每个特征对个体分类的影响。具体而言,利用合作博弈的沙普利值引入了一种该影响的度量。此外,基于效率和平衡贡献的属性,对所提出的度量进行了公理表征。此外,还设计了一些实验以验证该度量的适当性能。最后,将所介绍的方法应用于新冠肺炎患者样本,以研究某些人口统计学或风险因素对与疾病演变相关的各种感兴趣事件的影响。