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Main Authors: Wang, D. Y. C., Jordanger, Lars Arne, Lin, Jerry Chun-Wei
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.15827
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author Wang, D. Y. C.
Jordanger, Lars Arne
Lin, Jerry Chun-Wei
author_facet Wang, D. Y. C.
Jordanger, Lars Arne
Lin, Jerry Chun-Wei
contents Customer churn, particularly in the telecommunications sector, influences both costs and profits. As the explainability of models becomes increasingly important, this study emphasizes not only the explainability of customer churn through machine learning models, but also the importance of identifying multivariate patterns and setting soft bounds for intuitive interpretation. The main objective is to use a machine learning model and fuzzy-set theory with top-\textit{k} HUIM to identify highly associated patterns of customer churn with intuitive identification, referred to as Highly Associated Fuzzy Churn Patterns (HAFCP). Moreover, this method aids in uncovering association rules among multiple features across low, medium, and high distributions. Such discoveries are instrumental in enhancing the explainability of findings. Experiments show that when the top-5 HAFCPs are included in five datasets, a mixture of performance results is observed, with some showing notable improvements. It becomes clear that high importance features enhance explanatory power through their distribution and patterns associated with other features. As a result, the study introduces an innovative approach that improves the explainability and effectiveness of customer churn prediction models.
format Preprint
id arxiv_https___arxiv_org_abs_2410_15827
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Explainability of Highly Associated Fuzzy Churn Patterns in Binary Classification
Wang, D. Y. C.
Jordanger, Lars Arne
Lin, Jerry Chun-Wei
Machine Learning
Customer churn, particularly in the telecommunications sector, influences both costs and profits. As the explainability of models becomes increasingly important, this study emphasizes not only the explainability of customer churn through machine learning models, but also the importance of identifying multivariate patterns and setting soft bounds for intuitive interpretation. The main objective is to use a machine learning model and fuzzy-set theory with top-\textit{k} HUIM to identify highly associated patterns of customer churn with intuitive identification, referred to as Highly Associated Fuzzy Churn Patterns (HAFCP). Moreover, this method aids in uncovering association rules among multiple features across low, medium, and high distributions. Such discoveries are instrumental in enhancing the explainability of findings. Experiments show that when the top-5 HAFCPs are included in five datasets, a mixture of performance results is observed, with some showing notable improvements. It becomes clear that high importance features enhance explanatory power through their distribution and patterns associated with other features. As a result, the study introduces an innovative approach that improves the explainability and effectiveness of customer churn prediction models.
title Explainability of Highly Associated Fuzzy Churn Patterns in Binary Classification
topic Machine Learning
url https://arxiv.org/abs/2410.15827