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Interdisciplinarity, Temporal Diversity, and Scientific Impact: Perspective on References |
Yang Alex J.1,2, Wang Zuorong1,2, Deng Sanhong1,2, Wang Hao1,2, Zhang Xuezhou3 |
1.School of Information Management, Nanjing University, Nanjing 210023 2.Key Laboratory of Data Engineering and Knowledge Services in Provincial Universities (Nanjing University), Nanjing 210023 3.Jiangsu Institute of Quality and Standardization, Nanjing 210004 |
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Abstract Building on the concept of interdisciplinarity, this study proposes a measurement framework for temporal diversity, quantifying it into four dimensions: temporal richness, temporal imbalance, temporal disparity, and temporal depth. The study meticulously analyzes the temporal trends and distribution characteristics of interdisciplinarity and temporal diversity, as well as the career evolution patterns of high-level scientists, using 38,879,575 scientific papers from the Microsoft Academic Graph database spanning from 1950 to 2020. The relationship between interdisciplinarity, temporal diversity, and scientific impact is further explored. The findings reveal that: (1) The interdisciplinary and temporal diversity of papers exhibits a consistent growth trend that differs depending on the field. (2) Both interdisciplinarity and temporal diversity indicators show heterogeneous distribution characteristics, such as scale-free distribution, and a weak correlation exists between them. (3) In the careers of high-level scientists, both interdisciplinarity and temporal diversity show significant growth trends, largely attributable to an increase in the number of their referenced papers. (4) Interdisciplinarity and temporal diversity have opposite effects on scientific impact with interdisciplinarity significantly promoting scientific impact and temporal diversity significantly inhibiting it, suggesting that a combination of strong interdisciplinarity and weak temporal diversity has the highest probability of becoming a disruptive hotspot paper. The temporal diversity measurement framework proposed in this study enriches the theories of knowledge integration and interdisciplinarity, providing insights into science and technology policy and academic evaluation.
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Received: 08 October 2023
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