首页> 美国卫生研究院文献>Iranian Journal of Pharmaceutical Research : IJPR >Knowledge discovery from patients’ behavior via clustering-classification algorithms based on weighted eRFM and CLV model: An empirical study in public health care services
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Knowledge discovery from patients’ behavior via clustering-classification algorithms based on weighted eRFM and CLV model: An empirical study in public health care services

机译:通过基于加权eRFM和CLV模型的聚类分类算法从患者行为中发现知识:公共卫生服务的实证研究

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摘要

The rapid growing of information technology (IT) motivates and makes competitive advantages in health care industry. Nowadays, many hospitals try to build a successful customer relationship management (CRM) to recognize target and potential patients, increase patient loyalty and satisfaction and finally maximize their profitability. Many hospitals have large data warehouses containing customer demographic and transactions information. Data mining techniques can be used to analyze this data and discover hidden knowledge of customers. This research develops an extended RFM model, namely RFML (added parameter: Length) based on health care services for a public sector hospital in Iran with the idea that there is contrast between patient and customer loyalty, to estimate customer life time value (CLV) for each patient. We used Two-step and K-means algorithms as clustering methods and Decision tree (CHAID) as classification technique to segment the patients to find out target, potential and loyal customers in order to implement strengthen CRM. Two approaches are used for classification: first, the result of clustering is considered as Decision attribute in classification process and second, the result of segmentation based on CLV value of patients (estimated by RFML) is considered as Decision attribute. Finally the results of CHAID algorithm show the significant hidden rules and identify existing patterns of hospital consumers.
机译:信息技术(IT)的快速发展激发了医疗保健行业的竞争优势。如今,许多医院都试图建立成功的客户关系管理(CRM),以识别目标患者和潜在患者,提高患者忠诚度和满意度,并最终使他们的利润最大化。许多医院都有包含客户人口统计和交易信息的大型数据仓库。数据挖掘技术可用于分析此数据并发现客户的隐藏知识。这项研究基于伊朗一家公立医院的医疗保健服务,开发了扩展的RFM模型,即RFML(附加参数:Length),其构想是患者忠诚度与客户忠诚度之间存在差异,以估算客户生命周期价值(CLV)对于每个病人。我们使用两步法和K-means算法作为聚类方法,并使用决策树(CHAID)作为分类技术,对患者进行细分以找出目标客户,潜在客户和忠实客户,以实施加强的CRM。使用两种方法进行分类:首先,将聚类结果视为分类过程中的决策属性,其次,将基于患者CLV值(由RFML估计)的分割结果视为决策属性。最后,CHAID算法的结果显示了重要的隐藏规则,并确定了医院消费者的现有模式。

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