预测在线支付平台个性化下次付款日期的机器学习方法

L. C. R. Karunathunge, B. N. Dewapura, V. A. S. Perera, G. P. R. A. Kavirathne, A. Karunasena, M. Pemadasa
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引用次数: 0

摘要

近年来,特别是由于COVID-19大流行,数字支付的使用呈指数级增长。这是因为在线支付方式在日常交易和支付水电费、电话费等公用事业账单方面提供了许多好处。了解消费者何时会进行特定的在线交易或账单支付,对于在线支付平台计划营销活动是有益的,因为目标营销在当今非常流行。然而,预测这一点并非易事,因为在线支付平台上每分钟都有数千笔交易发生。本文介绍了一项研究的结果,该研究通过使用机器学习技术预测斯里兰卡一家金融公司的客户个性化,公用事业账单支付类型明智的下一个付款日期。这不仅通过分析在线交易历史记录,还通过分析客户特征和斯里兰卡特有的假日日历来实现。在研究结束时,确定了XGBoost Regressor是最适合处理该场景的机器学习算法等,提供了91.02%的准确率。这些预测将用于向客户发送个性化提醒和折扣优惠,而不是在他们计划进行在线支付时发送一般的普通通知。这样的提醒和优惠将在客户的移动设备上通知,最终客户和企业主都将从中受益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Approach to Predict the Personalized Next Payment Date of An Online Payment Platform
Use of digital payments has risen exponentially in the recent past especially due to the COVID-19 pandemic. This is because online payment methods offer many benefits in performing their day-to-day transactions and paying utility bills such as electricity bills, water bills, telephone bills and etc. Knowing when a consumer will perform a specific online transaction, or bill payment is beneficial to an online payment platform to plan marketing campaigns since targeted marketing has become very prevalent nowadays. However, predicting this is not an easy task since thousands of transactions are happening in each and every minute of an online payment platform. This paper presents the results of a study that investigated predicting the customer personalized, utility bill payment type wise next payment date of a financial company in Sri Lanka by using machine learning techniques. This is accomplished by analyzing not only online transaction history but also customer characteristics and a holiday calendar which is specific to Sri Lanka. At the end of the study, it was identified that XGBoost Regressor is the most suitable machine learning algorithm, etc deal with this scenario which provided 91.02% accuracy. These predictions will be used for sending personalized reminders and discount offers to customers without sending general common notifications when they are planning to do an online payment. Such reminders and offers will be notified on the mobile devices of the customers and, ultimately both customers and the business owners will be benefited by this.
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