Customer Churn Prediction for a Software-as-a-Service Inventory Management Software Company: A Case Study in Thailand

Phongsatorn Amornvetchayakul, N. Phumchusri
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引用次数: 3

Abstract

Software-as-a-Service is the fast growth and high market values as a new emerging online business. Customer churn is a critical measure for this business. Thus, this paper focuses on seeking a customer churn prediction model for a Software-as-a-Service inventory management software company in Thailand which is facing a high churn rate. This paper executes the prediction models with four machine learning algorithms: logistic regression, support vector machine, decision tree and random forest. The random forest model is capable to provide lowest error with 10-fold cross validation average scores of 91.6% recall and 92.6% F1-score. Moreover, feature importance scores can highlight useful insights of case-study that business metrics are significantly related to churn behavior. As a result, this paper is beneficial to the case-study company to help indicate real churn customer and enhance the effectiveness in executive decision and marketing campaign.
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软件即服务库存管理软件公司客户流失预测:泰国案例研究
软件即服务是一种发展迅速、市场价值高的新兴在线业务。客户流失率是衡量这项业务的关键指标。因此,本文的重点是为泰国一家面临高流失率的软件即服务库存管理软件公司寻求客户流失预测模型。本文使用逻辑回归、支持向量机、决策树和随机森林四种机器学习算法来实现预测模型。随机森林模型能够提供最低的误差,10倍交叉验证的平均分数为91.6%的召回率和92.6%的f1分数。此外,功能重要性分数可以突出案例研究的有用见解,即业务指标与流失行为显著相关。因此,本文有助于案例研究公司发现真正的流失客户,提高执行决策和营销活动的有效性。
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