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Research on Enterprise Competitiveness Factor Analysis Combining Semantic Clustering |
Zhang Yufeng, He Chao, Wang Zhifang, Zhou Lei |
Center for Studies of Information Resources of Wuhan University, Wuhan 430072, China |
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Abstract This paper integrates clustering into the exploration and discovery of enterprise competitiveness factors,then proposes a semantic-based comprehensive hierarchical clustering analysis method according to the software enterprise domain Ontology constructed by the research team. This method fuses Ontology and clustering technologies, brings forth new ideas for the clustering analysis method based on domain Ontology,that is Onto-kmeans, and achieves the analysis and acquisition of enterprise competitiveness factors at semantic level. The experimental results indicate that this method can significantly improve the accuracy and efficiency of clustering analysis,effectively mine and obtain global factors influencing the competitiveness of software enterprise, identify and verify the major factors.
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Received: 19 June 2012
Published: 25 December 2012
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