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Research Article

Study on the Effect of International Knowledge Flows on the Industry Innovation Performance in China

Liu Jia, YE Xuan-ting and Liu Yun

From the industrial perspective, absorbing and obtaining external knowledge can save the cost of innovation and accelerate the transformation of knowledge and technology, which plays an important role in promoting industrial innovation. Three industries, namely, computer and communications, drugs and medical, electrical and electronic are taken as the objects of the empirical study. Negative binomial models and related regression models for measuring the effect of international knowledge flow on the industry innovation performance are constructed by collecting and arranging the international knowledge flow data and innovation performance data related to high-tech industry. The empirical analysis results show that patent transnational cooperation demonstrates positive promotion effects on the increase number of industry authorized patents; patent transnational citation makes a significant role in promoting the future patent citation frequency; the technical innovation brought by technology introduction funds plays an important role in the development and industrialization of new products.

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  How to cite this article:

Liu Jia, YE Xuan-ting and Liu Yun, 2013. Study on the Effect of International Knowledge Flows on the Industry Innovation Performance in China. Journal of Applied Sciences, 13: 1669-1676.

DOI: 10.3923/jas.2013.1669.1676


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