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引用次数: 0
摘要
本文在EICMM(企业信息化能力成熟度模型)的基础上,研究了对企业信息化能力成熟度进行排序的必要性。在EICMM的基础上,采用适当的方法(聚类分析法)进行实证研究,从评价指标体系入手,设计问卷,收集信息化的相关数据;利用CABOSFV (Clustering Algorithm Based on Sparse Feature Vector)算法对调查问卷的整理结果进行处理和分析,并根据实证分析的结论解释EICMM分层和排序假设的成立。
Empirically Analyzing the Necessity of EICMM Ranking by Clustering
In this paper, the necessity of ranking of the enterprise’s informatization capacity maturity is researched on the basis of EICMM (Enterprise Informatization Capacity Maturity Model). Based on the EICMM, we adopt the proper method (Cluster Analytical Method) for the empirical research, commence from the evaluated index system, design the questionnaires and collect the related data of informatization, and handle and analyze the collated findings of the surveys and questionnaires by means of CABOSFV (Clustering Algorithm Based on Sparse Feature Vector) algorithm and explain the holds of the assumption of stratification and ranking of EICMM by resorting to the conclusion of such empirical analysis.