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Methods of Importance Evaluation for Information Subsystems in Manufacturing Enterprises Based on Centrality

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DOI: 10.4236/ojbm.2015.32013    2,271 Downloads   2,794 Views   Citations

ABSTRACT

Determining the importance of information subsystems is critical to the construction and maintenance of the information systems in manufacturing companies. From the perspective of the interactions among subsystems, several centrality models are developed to assess the importance of subsystems by using software called Code Blocks. A case study is done to test the methods. The results can provide an objective basis for decision making in management activities of an information system, such as information system planning and maintenance, resource allocation and utilization in manufacturing enterprises. The proposed methods will provide new approaches to the quantitative evaluation of the importance of information subsystems.

Conflicts of Interest

The authors declare no conflicts of interest.

Cite this paper

Song, Z. , Sun, Y. , Yi, J. and Ni, L. (2015) Methods of Importance Evaluation for Information Subsystems in Manufacturing Enterprises Based on Centrality. Open Journal of Business and Management, 3, 125-134. doi: 10.4236/ojbm.2015.32013.

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