Spline-rule ensemble classifiers with ...
Type de document :
Compte-rendu et recension critique d'ouvrage
Titre :
Spline-rule ensemble classifiers with structured sparsity regularization for interpretable customer churn modeling
Auteur(s) :
de Bock, Koen W. [Auteur]
Audencia Business School
De Caigny, Arno [Auteur]
Lille économie management - UMR 9221 [LEM]
Audencia Business School
De Caigny, Arno [Auteur]
Lille économie management - UMR 9221 [LEM]
Titre de la revue :
Decision Support Systems
Pagination :
113523
Éditeur :
Elsevier
Date de publication :
2021-11
ISSN :
0167-9236
Mot(s)-clé(s) en anglais :
Customer churn prediction
Predictive analytics
Spline-rule ensemble
Interpretable data science
Sparse group lasso
Regularized regression
Predictive analytics
Spline-rule ensemble
Interpretable data science
Sparse group lasso
Regularized regression
Discipline(s) HAL :
Sciences de l'Homme et Société/Gestion et management
Statistiques [stat]/Machine Learning [stat.ML]
Sciences de l'Homme et Société/Méthodes et statistiques
Statistiques [stat]/Machine Learning [stat.ML]
Sciences de l'Homme et Société/Méthodes et statistiques
Résumé en anglais : [en]
An important business domain that relies heavily on advanced statistical- and machine learning algorithms to support operational decision-making is customer retention management. Customer churn prediction is a crucial tool ...
Lire la suite >An important business domain that relies heavily on advanced statistical- and machine learning algorithms to support operational decision-making is customer retention management. Customer churn prediction is a crucial tool to support customer retention. It allows an early identification of customers who are at risk to abandon the company and provides the ability to gain insights into why customers are at risk. Hence, customer churn prediction models should complement predictive performance with model insights. Inspired by their ability to reconcile strong predictive performance and interpretability, this study introduces rule ensembles and their extension, spline-rule ensembles, as a promising family of classification algorithms to the customer churn prediction domain. Spline-rule ensembles combine the flexibility of a tree-based ensemble classifier with the simplicity of regression analysis. They do, however, neglect the relatedness between potentially conflicting model components which can introduce unnecessary complexity in the models and compromises model interpretability. To tackle this issue, a novel algorithmic extension, spline-rule ensembles with sparse group lasso regularization (SRE-SGL) is proposed to enhance interpretability through structured regularization. Experiments on fourteen real-world customer churn data sets in different industries (i) demonstrate the superior predictive performance of spline-rule ensembles with sparse group lasso over a set well yet powerful benchmark methods in terms of AUC and top decile lift; (ii) show that spline-rule ensembles with sparse group lasso regularization significantly outperform conventional rule ensembles whilst performing at least as well as conventional spline-rule ensembles; and (iii) illustrate the interpretable nature of a spline-rule ensemble model and the advantage of structured regularization in SRE-SGL by means of a case study on customer churn prediction for a telecommunications company.Lire moins >
Lire la suite >An important business domain that relies heavily on advanced statistical- and machine learning algorithms to support operational decision-making is customer retention management. Customer churn prediction is a crucial tool to support customer retention. It allows an early identification of customers who are at risk to abandon the company and provides the ability to gain insights into why customers are at risk. Hence, customer churn prediction models should complement predictive performance with model insights. Inspired by their ability to reconcile strong predictive performance and interpretability, this study introduces rule ensembles and their extension, spline-rule ensembles, as a promising family of classification algorithms to the customer churn prediction domain. Spline-rule ensembles combine the flexibility of a tree-based ensemble classifier with the simplicity of regression analysis. They do, however, neglect the relatedness between potentially conflicting model components which can introduce unnecessary complexity in the models and compromises model interpretability. To tackle this issue, a novel algorithmic extension, spline-rule ensembles with sparse group lasso regularization (SRE-SGL) is proposed to enhance interpretability through structured regularization. Experiments on fourteen real-world customer churn data sets in different industries (i) demonstrate the superior predictive performance of spline-rule ensembles with sparse group lasso over a set well yet powerful benchmark methods in terms of AUC and top decile lift; (ii) show that spline-rule ensembles with sparse group lasso regularization significantly outperform conventional rule ensembles whilst performing at least as well as conventional spline-rule ensembles; and (iii) illustrate the interpretable nature of a spline-rule ensemble model and the advantage of structured regularization in SRE-SGL by means of a case study on customer churn prediction for a telecommunications company.Lire moins >
Langue :
Anglais
Vulgarisation :
Non
Collections :
Source :
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