Method of Discovering Interdisciplinary Knowledge of the National Natural Science Foundation of China Based on Word Embedding: A Case Study on Artificial Intelligence and Information Management
Wang Weijun1,2, Yao Chang3, Qiao Ziyue1,2, Cui Wenjuan1, Du Yi1,2, Zhou Yuanchun1,2
1.Computer Network Information Center, Chinese Academy of Sciences, Beijing 100190 2.University of Chinese Academy of Sciences, Beijing 100049 3.Information Center, National Natural Science Foundation of China, Beijing 100085
王卫军, 姚畅, 乔子越, 崔文娟, 杜一, 周园春. 基于词嵌入的国家自然科学基金学科交叉知识发现方法——以“人工智能”与“信息管理”为例[J]. 情报学报, 2021, 40(8): 831-845.
Wang Weijun, Yao Chang, Qiao Ziyue, Cui Wenjuan, Du Yi, Zhou Yuanchun. Method of Discovering Interdisciplinary Knowledge of the National Natural Science Foundation of China Based on Word Embedding: A Case Study on Artificial Intelligence and Information Management. 情报学报, 2021, 40(8): 831-845.
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