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Research on Enterprise Innovation Performance Evaluation from the Perspective of Network Embedment

Yuqing Bai

Abstract


Based on social network theory, social capital theory, collaborative innovation theory and structural hole theory, and from the perspective of network embeddedness in industry-university-research collaborative innovation, this paper divides network embeddedness into relational embeddedness, structural embeddedness and cognitive embeddedness, and obtains qualitative data and quantitative data respectively through questionnaire survey and patent inquiry. The entropy weight method and grey relational degree method are combined to make a comprehensive evaluation of enterprise innovation performance. Selected 20 enterprises from the top 100 list of electronic information manufacturing enterprises in Guangdong Province, measured their innovation performance and ranked them.


Keywords


Collaborative Innovation; Network Embedding; Innovation Performance

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References


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DOI: http://dx.doi.org/10.18686/mmf.v6i6.6172

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