Research on the measurement of enterprise technological innovation capability model based on information axiom

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Abstract

Enterprise technological innovation is featured by multi-level, multi-index, complex with uncertain information. This paper studies the measurement of enterprise technological innovation capability based on measurement index system that can reflect the innovation ability in an objective and systematic way. This index system is constructed according to certain rules and standards and sheds light on the measurement index model based on Euclidean distance and Information axiom. In this model, measurement indicators of different types are standardized and Euclidean distance is established. Then the weight of information content produced by Euclidean distance is calculated to get the comprehensive information content so as to measure the enterprise technological innovation capability. Measurement of three enterprises proves the model to be systematic, scientific and feasible. © 2014 SERSC.

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APA

Zhang, H. (2014). Research on the measurement of enterprise technological innovation capability model based on information axiom. International Journal of Multimedia and Ubiquitous Engineering, 9(7), 319–332. https://doi.org/10.14257/ijmue.2014.9.7.27

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