Telekom Malaysia, Faculty of Business, Ayer Keroh, Melaka, 75450, Malaysia.
Faculty of Information Science and Technology, Multimedia University, Ayer Keroh, Melaka, 75450, Malaysia.
F1000Res. 2021 Dec 13;10:1274. doi: 10.12688/f1000research.73597.1. eCollection 2021.
: Customer churn is a term that refers to the rate at which customers leave the business. Churn could be due to various factors, including switching to a competitor, cancelling their subscription because of poor customer service, or discontinuing all contact with a brand due to insufficient touchpoints. Long-term relationships with customers are more effective than trying to attract new customers. A rise of 5% in customer satisfaction is followed by a 95% increase in sales. By analysing past behaviour, companies can anticipate future revenue. This article will look at which variables in the Net Promoter Score (NPS) dataset influence customer churn in Malaysia's telecommunications industry. The aim of This study was to identify the factors behind customer churn and propose a churn prediction framework currently lacking in the telecommunications industry. : This study applied data mining techniques to the NPS dataset from a Malaysian telecommunications company in September 2019 and September 2020, analysing 7776 records with 30 fields to determine which variables were significant for the churn prediction model. We developed a propensity for customer churn using the Logistic Regression, Linear Discriminant Analysis, K-Nearest Neighbours Classifier, Classification and Regression Trees (CART), Gaussian Naïve Bayes, and Support Vector Machine using 33 variables. : Customer churn is elevated for customers with a low NPS. However, an immediate helpdesk can act as a neutral party to ensure that the customer needs are met and to determine an employee's ability to obtain customer satisfaction. : It can be concluded that CART has the most accurate churn prediction (98%). However, the research is prohibited from accessing personal customer information under Malaysia's data protection policy. Results are expected for other businesses to measure potential customer churn using NPS scores to gather customer feedback.
客户流失是指客户离开企业的速度。流失可能是由于各种因素造成的,包括转向竞争对手、因客户服务不佳而取消订阅、或因接触点不足而停止与品牌的所有联系。与客户建立长期关系比吸引新客户更有效。客户满意度提高 5%,销售额就会增加 95%。通过分析过去的行为,公司可以预测未来的收入。本文将研究马来西亚电信行业中,客户满意度调查(NPS)数据集中的哪些变量会影响客户流失。本研究旨在确定客户流失的原因,并提出一个目前在电信行业中缺乏的客户流失预测框架。本研究应用数据挖掘技术对马来西亚一家电信公司 2019 年 9 月和 2020 年 9 月的 NPS 数据集进行了分析,共分析了 7776 条记录,其中包含 30 个字段,以确定哪些变量对客户流失预测模型具有重要意义。我们使用逻辑回归、线性判别分析、K 近邻分类器、分类回归树(CART)、高斯朴素贝叶斯和支持向量机等技术,对客户流失的倾向进行了研究。我们使用了 33 个变量。客户的 NPS 较低时,客户流失率较高。然而,即时的客服中心可以作为中立的一方,确保客户的需求得到满足,并确定员工获得客户满意度的能力。可以得出结论,CART 具有最准确的流失预测(98%)。然而,根据马来西亚的数据保护政策,研究禁止访问个人客户信息。其他企业可以使用 NPS 分数来衡量潜在的客户流失,以收集客户反馈。