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SVM模型在河南省中小企业技术创新能力评价中的应用 被引量:3

Application of SVM Model in the Evaluation of Henan SME Technological Innovation Capability
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摘要 通过建立科学完整的评价指标体系,对中小企业的技术创新能力进行客观而准确的测度和评价。建立的指标体系,主要从创新决策能力、资源投入能力、研究开发能力、制造能力、市场营销能力、创新管理能力六个方面进行全面的思考和总结。 Scientific integrity of this article is to establish evaluation index system, the technological innovation capacity of SMEs is to conduct an objective and accurate measurement and evaluation. Index system is established in this article, mainly including decision - making capacities from the innovation, inputting capacities of resources, research and development capabilities, manufacturing capacities, marketing capacities, innovation management capabilities, Based on them, the article makes comprehensive studies and a summary.
作者 王小黎
出处 《科技管理研究》 北大核心 2011年第9期92-95,共4页 Science and Technology Management Research
基金 河南省科技厅软科学项目"河南省中小企业科技创新测度与评价体系研究"(082400440210)
关键词 SVM模型 中小企业 技术创新 评价 指标体系 SVM model SME technological innovation evaluation index system
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参考文献6

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二级参考文献9

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