Improved Churn Causal Analysis Through Restrained High-Dimensional Feature Space Effects in Financial Institutions

Author:

Hason Rudd DavidORCID,Huo Huan,Xu Guandong

Abstract

AbstractCustomer churn describes terminating a relationship with a business or reducing customer engagement over a specific period. Customer acquisition cost can be five to six times that of customer retention, hence investing in customers with churn risk is wise. Causal analysis of the churn model can predict whether a customer will churn in the foreseeable future and identify effects and possible causes for churn. In general, this study presents a conceptual framework to discover the confounding features that correlate with independent variables and are causally related to those dependent variables that impact churn. We combine different algorithms including the SMOTE, ensemble ANN, and Bayesian networks to address churn prediction problems on a massive and high-dimensional finance data that is usually generated in financial institutions due to employing interval-based features used in Customer Relationship Management systems. The effects of the curse and blessing of dimensionality assessed by utilising the Recursive Feature Elimination method to overcome the high dimension feature space problem. Moreover, a causal discovery performed to find possible interpretation methods to describe cause probabilities that lead to customer churn. Evaluation metrics on validation data confirm the random forest and our ensemble ANN model, with %86 accuracy, outperformed other approaches. Causal analysis results confirm that some independent causal variables representing the level of super guarantee contribution, account growth, and account balance amount were identified as confounding variables that cause customer churn with a high degree of belief. This article provides a real-world customer churn analysis from current status inference to future directions in local superannuation funds.

Publisher

Springer Science and Business Media LLC

Cited by 4 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. A Review on Machine Learning Methods for Customer Churn Prediction and Recommendations for Business Practitioners;IEEE Access;2024

2. Predict customer churn using combination deep learning networks model;Neural Computing and Applications;2023-12-21

3. Remora Optimization with Machine Learning Driven Churn Prediction for Business Improvement;2023 International Conference on Intelligent Data Communication Technologies and Internet of Things (IDCIoT);2023-01-05

4. Kernelized Extreme Learning Machine Enabled Churn Predictive Financial Risk Assessment Model;2022 International Conference on Augmented Intelligence and Sustainable Systems (ICAISS);2022-11-24

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