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A stacked ensemble learning method for customer lifetime value prediction

Nader Asadi Ejgerdi (Department of Industrial and Mechanical Engineering, KN Toosi University of Technology, Tehran, Iran)
Mehrdad Kazerooni (Department of Industrial and Mechanical Engineering, KN Toosi University of Technology, Tehran, Iran)

Kybernetes

ISSN: 0368-492X

Article publication date: 30 March 2023

201

Abstract

Purpose

With the growth of organizations and businesses, customer acquisition and retention processes have become more complex in the long run. That is why customer lifetime value (CLV) has become crucial to sales managers. Predicting the CLV is a strategic weapon and competitive advantage in increasing profitability and identifying customers with more splendid profitability and is one of the essential key performance indicators (KPI) used in customer segmentation. Thus, this paper proposes a stacked ensemble learning method, a combination of multiple machine learning methods, for CLV prediction.

Design/methodology/approach

In order to utilize customers’ behavioral features for predicting the value of each customer’s CLV, the data of a textile sales company was used as a case study. The proposed stacked ensemble learning method is compared with several popular predictive methods named deep neural networks, bagging support vector regression, light gradient boosting machine, random forest and extreme gradient boosting.

Findings

Empirical results indicate that the regression performance of the stacked ensemble learning method outperformed other methods in terms of normalized rooted mean squared error, normalized mean absolute error and coefficient of determination, at 0.248, 0.364 and 0.848, respectively. In addition, the prediction capability of the proposed method improved significantly after optimizing its hyperparameters.

Originality/value

This paper proposes a stacked ensemble learning method as a new method for accurate CLV prediction. The results and comparisons support the robustness and efficiency of the proposed method for CLV prediction.

Keywords

Citation

Asadi Ejgerdi, N. and Kazerooni, M. (2023), "A stacked ensemble learning method for customer lifetime value prediction", Kybernetes, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/K-12-2022-1676

Publisher

:

Emerald Publishing Limited

Copyright © 2023, Emerald Publishing Limited

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