A Technique to Exploit Free-Form Notes to Predict Customer Churn

Gregory W. Ramsey, S. Bapna
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引用次数: 5

Abstract

As healthcare costs rise, hospitals are seeking ways to improve operations. This paper examines the usefulness of free-form notes to solve a classification problem commonly associated with customer churn. The authors show that classifiers which incorporate free-form notes, using natural language processing techniques, are up to 9% more accurate than classifiers that are solely developed using structured data. The authors suggest that hospitals and chronic disease management clinics can use structured data and free-form notes from electronic health records to predict which patients are likely to cease receiving care from their facilities. Classification tools for predicting patient churn are of interest to hospital administrators; such information can aid in resource planning and facilitate smoother handoffs between care providers.
一种利用自由形式笔记来预测客户流失的技术
随着医疗成本的上升,医院正在寻求改善运营的方法。本文考察了自由形式笔记的有用性,以解决通常与客户流失相关的分类问题。作者表明,使用自然语言处理技术,结合自由形式注释的分类器比仅使用结构化数据开发的分类器准确率高出9%。作者建议,医院和慢性病管理诊所可以使用电子健康记录中的结构化数据和自由格式的注释来预测哪些患者可能会停止从他们的机构接受治疗。预测病人流失的分类工具是医院管理者感兴趣的;这些信息可以帮助资源规划,并促进护理提供者之间更顺利的交接。
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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