Liu Sandra S, Chen Jie
Department of Consumer Sciences and Retailing, Purdue University, West Lafayette, Indiana, USA.
Int J Health Care Qual Assur. 2009;22(2):117-34. doi: 10.1108/09526860910944610.
This paper aims to provide an example of how to use data mining techniques to identify patient segments regarding preferences for healthcare attributes and their demographic characteristics.
DESIGN/METHODOLOGY/APPROACH: Data were derived from a number of individuals who received in-patient care at a health network in 2006. Data mining and conventional hierarchical clustering with average linkage and Pearson correlation procedures are employed and compared to show how each procedure best determines segmentation variables.
Data mining tools identified three differentiable segments by means of cluster analysis. These three clusters have significantly different demographic profiles.
The study reveals, when compared with traditional statistical methods, that data mining provides an efficient and effective tool for market segmentation. When there are numerous cluster variables involved, researchers and practitioners need to incorporate factor analysis for reducing variables to clearly and meaningfully understand clusters.
ORIGINALITY/VALUE: Interests and applications in data mining are increasing in many businesses. However, this technology is seldom applied to healthcare customer experience management. The paper shows that efficient and effective application of data mining methods can aid the understanding of patient healthcare preferences.
本文旨在提供一个示例,说明如何使用数据挖掘技术来识别患者在医疗保健属性偏好及其人口统计学特征方面的细分群体。
设计/方法/途径:数据来自2006年在一个医疗网络接受住院治疗的若干个体。采用数据挖掘以及具有平均连锁和皮尔逊相关程序的传统层次聚类方法,并进行比较,以展示每种方法如何最好地确定细分变量。
数据挖掘工具通过聚类分析识别出三个可区分的细分群体。这三个聚类具有显著不同的人口统计学特征。
该研究表明,与传统统计方法相比,数据挖掘为市场细分提供了一种高效且有效的工具。当涉及众多聚类变量时,研究人员和从业者需要纳入因子分析以减少变量,从而清晰且有意义地理解聚类。
原创性/价值:数据挖掘在许多企业中的兴趣和应用正在增加。然而,这项技术很少应用于医疗保健客户体验管理。本文表明,数据挖掘方法的高效且有效应用有助于理解患者的医疗保健偏好。