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战略性新兴产业多领域知识融合路径研究基于引(6)

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【摘要】[16]苗红, 宋昱晓, 黄鲁成. 基于知识流动网络评价的技术融合趋势研究 [J]. 科技进步与对策, 2018, 35(6): H, Song Y X, Huang L C. Research on technology convergence trend ba

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[28]周源, 杜俊飞, 刘宇飞, 等. 基于引用网络和文本挖掘的技术演化路径识别 [J]. 情报杂志, 2018, 37(10): Y, Du J F, Liu Y F, et al. Identifying technology evolution pathways by integrating citation network and text mining [J].Journal of Intelligence, 2018, 37(10): 80-85.

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