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Lifelog Data-Based Prediction Model of Digital Health Care App Customer Churn: Retrospective Observational Study

机译:基于LifeLog基于数据的数字保健应用程序的预测模型客户流失:回顾性观测研究

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摘要

BackgroundCustomer churn is the rate at which customers stop doing business with an entity. In the field of digital health care, user churn prediction is important not only in terms of company revenue but also for improving the health of users. Churn prediction has been previously studied, but most studies applied time-invariant model structures and used structured data. However, additional unstructured data have become available; therefore, it has become essential to process daily time-series log data for churn predictions. ObjectiveWe aimed to apply a recurrent neural network structure to accept time-series patterns using lifelog data and text message data to predict the churn of digital health care users. MethodsThis study was based on the use data of a digital health care app that provides interactive messages with human coaches regarding food, exercise, and weight logs. Among the users in Korea who enrolled between January 1, 2017 and January 1, 2019, we defined churn users according to the following criteria: users who received a refund before the paid program ended and users who received a refund 7 days after the trial period. We used long short-term memory with a masking layer to receive sequence data with different lengths. We also performed topic modeling to vectorize text messages. To interpret the contributions of each variable to model predictions, we used integrated gradients, which is an attribution method. ResultsA total of 1868 eligible users were included in this study. The final performance of churn prediction was an F1 score of 0.89; that score decreased by 0.12 when the data of the final week were excluded (F1 score 0.77). Additionally, when text data were included, the mean predicted performance increased by approximately 0.085 at every time point. Steps per day had the largest contribution (0.1085). Among the topic variables, poor habits (eg, drinking alcohol, overeating, and late-night eating) showed the largest contribution (0.0875). ConclusionsThe model with a recurrent neural network architecture that used log data and message data demonstrated high performance for churn classification. Additionally, the analysis of the contribution of the variables is expected to help identify signs of user churn in advance and improve the adherence in digital health care.
机译:BackgroundCustomer Churl是客户停止与实体开展业务的速度。在数字保健领域,用户流失预测不仅重要,而且很重要,而且很重要,而且还用于改善用户的健康。先前已经研究过流失预测,但大多数研究应用时间不变模型结构和使用的结构化数据。但是,额外的非结构化数据已有可用;因此,对流失预测的日常时间序列日志数据变得至关重要。目标旨在应用经常性神经网络结构,接受使用LifeLog数据和文本消息数据的时间序列模式,以预测数字保健用户的流失。方法研究基于数字保健应用程序的使用数据,提供与人类教练的交互式消息,了解有关食物,运动和重量日志。在2019年1月1日至2019年1月1日开始的韩国的用户中,我们根据以下标准定义了流失用户:在付费计划结束之前收到退款的用户和在试用期后7天收到退款的用户。我们使用具有掩蔽层的长短期存储器来接收具有不同长度的序列数据。我们还对Vectorive文本消息进行了主题建模。要解释每个变量的贡献,以模拟预测,我们使用了集成梯度,这是一个属性方法。结果总共1868年的符合条件的用户均包含在本研究中。搅拌预测的最终表现是F1得分为0.89;当排除最终一周的数据(F1得分0.77)时,该得分减少了0.12。另外,当包括文本数据时,平均预测性能在每次点时增加约0.085。每天步骤具有最大的贡献(0.1085)。主题变量中,良好的习惯(例如,饮酒,暴饮暴食和深夜吃)显示出最大的贡献(0.0875)。结论使用日志数据和消息数据的经常性神经网络架构的模型展示了搅拌分类的高性能。此外,预计对变量的贡献的分析有助于识别预先识别用户流失的迹象,并提高数字保健中的依从性。

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