一个用于卫生部门客户分类和风险分析的综合客户关系管理和数据挖掘框架

Ali Alsaç, Murat Çolak, Gülsen Aydin Keskin
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引用次数: 5

摘要

在当今的竞争环境中,以客户为导向的方法对组织来说是不可避免的。此时,为了实现客户满意,客户关系管理(CRM)的目标是提供满足客户期望的产品和服务。收集的客户数据是确定客户需求的重要来源。因此,利用公司数据库中的数据进行分析,确定客户的特征特征。通过这些数据,可以确定客户的产品选择,并提出可以提供给客户的机会。数据挖掘(DM)是通过对数据的分析,揭示有意义的信息和图像的过程。在本研究中,使用朴素贝叶斯(一种分类规则算法)、J48(一种生成决策树的算法)和k近邻IBk算法等数据挖掘算法分析了土耳其一家在卫生部门运营的公司的数据。因此,根据产品组和风险因素对客户进行分类。作为研究的结果,它旨在通过使用分类结果为公司制定营销策略和更有效的销售活动。此外,据我们所知,我们的论文是第一个在卫生部门实现的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An integrated customer relationship management and Data Mining framework for customer classification and risk analysis in health sector
In today's competitive environment, having a customer oriented approach is inevitable for organizations. At this point, in order to achieve customer satisfaction, customer relationship management (CRM) targets to provide products and services which meet customer expectation. Data which is collected about customers is an important source to determine their needs. Therefore, analysis is made to determine characteristic features of customers by using the data in data bases of the companies. Thanks to this data, it is possible to determine the product choice of customers and to put forth the opportunities that can be provided to customers. Data Mining (DM) is a process of revealing a meaningful information and image by the analysis of data. In this study, the data of a company which is operating in health sector in Turkey was analysed using some data mining algorithms like Naive Bayes which is an algorithm of classification rule, J48 which is one of the algorithms to generate decision tree and k-nearest neighbour IBk algorithm. Thus, customers were classified by product groups and risk factors. As a result of the study, it is aimed to develop a marketing strategy and a more effective sales campaign for the company by using the classification results. As well, to the best of our knowledge, our paper is the first study which realized in health sector.
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