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Data Mining for Needy Students Identify Based on Improved RFM Model: A Case Study of University

机译:基于改进RFM模型的贫困学生数据挖掘识别-以大学为例

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The government has built up a set of support system for poverty-stricken students in colleges and universities. There is a contradiction between the shortages of higher education tuition fees with the popularization of higher education. Limited funds allocated require resources and targeted toward needy students. RFM (Recency, Frequency, and Monetary) method is very effective attributes for customer segmentation. Our goal in this paper is to build improved RFM-based customer segmentation model to identify those needy students through the database of dining room. This study first build a framework for identify needy students based on RFM. Then improved RFM model through redefine Recency as ratio to data mining, and used Analytic Hierarchy Process (AHP) to determine weights of RFM variables. Finally, this study applied K-means algorithm to identify needy students. Through case study, the method can efficiently identify needy students and provide needy students list to department of university as reference.
机译:政府为高校贫困生建立了一套支持体系。高等教育学费短缺与高等教育大众化之间存在矛盾。分配的有限资金需要资源,并针对有需要的学生。 RFM(新近度,频率和货币)方法是用于客户细分的非常有效的属性。本文的目标是建立改进的基于RFM的客户细分模型,以通过餐厅数据库识别那些有需要的学生。这项研究首先建立了一个基于RFM识别贫困学生的框架。然后通过重新定义新近度作为数据挖掘的比率来改进RFM模型,并使用层次分析法(AHP)确定RFM变量的权重。最后,本研究应用K-means算法来识别有需要的学生。通过案例研究,该方法可以有效地识别有需要的学生,并将有需要的学生名单提供给大学系作为参考。

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