Customer churn analysis using feature optimization methods and tree-based classifiers

IF 3.8 4区 管理学 Q2 BUSINESS
Fatemeh Ehsani, Monireh Hosseini
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引用次数: 0

Abstract

Purpose

As internet banking service marketing platforms continue to advance, customers exhibit distinct behaviors. Given the extensive array of options and minimal barriers to switching to competitors, the concept of customer churn behavior has emerged as a subject of considerable debate. This study aims to delineate the scope of feature optimization methods for elucidating customer churn behavior within the context of internet banking service marketing. To achieve this goal, the author aims to predict the attrition and migration of customers who use internet banking services using tree-based classifiers.

Design/methodology/approach

The author used various feature optimization methods in tree-based classifiers to predict customer churn behavior using transaction data from customers who use internet banking services. First, the authors conducted feature reduction to eliminate ineffective features and project the data set onto a lower-dimensional space. Next, the author used Recursive Feature Elimination with Cross-Validation (RFECV) to extract the most practical features. Then, the author applied feature importance to assign a score to each input feature. Following this, the author selected C5.0 Decision Tree, Random Forest, XGBoost, AdaBoost, CatBoost and LightGBM as the six tree-based classifier structures.

Findings

This study acclaimed that transaction data is a reliable resource for elucidating customer churn behavior within the context of internet banking service marketing. Experimental findings highlight the operational benefits and enhanced customer retention afforded by implementing feature optimization and leveraging a variety of tree-based classifiers. The results indicate the significance of feature reduction, feature selection and feature importance as the three feature optimization methods in comprehending customer churn prediction. This study demonstrated that feature optimization can improve this prediction by increasing the accuracy and precision of tree-based classifiers and decreasing their error rates.

Originality/value

This research aims to enhance the understanding of customer behavior on internet banking service platforms by predicting churn intentions. This study demonstrates how feature optimization methods influence customer churn prediction performance. This approach included feature reduction, feature selection and assessing feature importance to optimize transaction data analysis. Additionally, the author performed feature optimization within tree-based classifiers to improve performance. The novelty of this approach lies in combining feature optimization methods with tree-based classifiers to effectively capture and articulate customer churn experience in internet banking service marketing.

利用特征优化方法和树状分类器分析客户流失情况
目的 随着网络银行服务营销平台的不断发展,客户表现出了与众不同的行为。由于客户有多种选择,而且转向竞争对手的障碍极小,客户流失行为的概念已成为一个颇受争议的话题。本研究旨在界定特征优化方法的范围,以阐明网络银行服务营销背景下的客户流失行为。为了实现这一目标,作者使用基于树的分类器来预测使用网上银行服务的客户的流失和迁移。设计/方法/途径作者使用基于树的分类器中的各种特征优化方法,利用使用网上银行服务的客户的交易数据来预测客户流失行为。首先,作者进行了特征还原,以剔除无效特征,并将数据集投射到低维空间。接着,作者使用递归特征消除与交叉验证(RFECV)来提取最实用的特征。然后,作者运用特征重要性为每个输入特征分配分数。随后,作者选择了 C5.0 决策树、随机森林、XGBoost、AdaBoost、CatBoost 和 LightGBM 作为六种基于树的分类器结构。 研究结果这项研究证实,在互联网银行服务营销的背景下,交易数据是阐明客户流失行为的可靠资源。实验结果凸显了通过实施特征优化和利用各种基于树的分类器所带来的运营效益和客户保留率的提高。结果表明,减少特征、特征选择和特征重要性这三种特征优化方法在理解客户流失预测方面具有重要意义。这项研究表明,特征优化可以提高基于树的分类器的准确度和精确度,并降低其错误率,从而改善这种预测。 原创性/价值这项研究旨在通过预测客户流失意向,加深对网上银行服务平台上客户行为的理解。本研究展示了特征优化方法如何影响客户流失预测性能。这种方法包括减少特征、选择特征和评估特征重要性,以优化交易数据分析。此外,作者还在基于树的分类器中进行了特征优化,以提高性能。这种方法的新颖之处在于将特征优化方法与基于树的分类器相结合,以有效捕捉和阐明互联网银行服务营销中的客户流失体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.80
自引率
20.50%
发文量
63
期刊介绍: ■Customer policy and service ■Marketing of services ■Marketing planning ■Service marketing abroad ■Service quality Capturing and retaining customers in a service industry is a vastly different activity to its product-based counterpart. The fickle nature of today"s consumer is a vital factor in understanding the factors which determine successful holding of market share - and the intense competition within the sector means practitioners must keep pace with new developments if they are to outwit competitors and develop customer loyalty.
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