论文标题
知识和社会相关性形状研究组合多元化
Knowledge and Social Relatedness Shape Research Portfolio Diversification
论文作者
论文摘要
科学发现是由科学家的选择以及他们的职业模式所塑造的。在科学领域工作所需的知识越来越大,因此个人很难踏上未开发的路径。然而,合作可以降低学习成本 - 尽管以增加协调成本为代价。在本文中,我们使用有关大量物理学家样本的出版历史的数据来衡量知识和社会相关性对其多元化策略的影响。使用双方网络,我们计算了一个主题相似性和社会接近度量度的度量。我们发现科学家的策略不是随机的,并且两者都受到了显着影响。跨主题的知识相关性解释了$ \约10 \%$的逻辑回归偏差和社会相关性,大约$ \ \%$ \%$ $,这表明科学是一个非常社会的企业:当科学家摆脱核心专业化时,他们通过协作来做到这一点。有趣的是,我们还发现知识与社会相关性之间存在显着的负面互动,这表明科学家越来越远,他们越依赖协作。我们的结果为科学多元化策略进行更广泛的定量分析提供了一个起点,这也可以扩展到技术创新的领域 - 从比较和政策的角度提供见解。
Scientific discovery is shaped by scientists' choices and thus by their career patterns. The increasing knowledge required to work at the frontier of science makes it harder for an individual to embark on unexplored paths. Yet collaborations can reduce learning costs -- albeit at the expense of increased coordination costs. In this article, we use data on the publication histories of a very large sample of physicists to measure the effects of knowledge and social relatedness on their diversification strategies. Using bipartite networks, we compute a measure of topics similarity and a measure of social proximity. We find that scientists' strategies are not random, and that they are significantly affected by both. Knowledge relatedness across topics explains $\approx 10\%$ of logistic regression deviances and social relatedness as much as $\approx 30\%$, suggesting that science is an eminently social enterprise: when scientists move out of their core specialization, they do so through collaborations. Interestingly, we also find a significant negative interaction between knowledge and social relatedness, suggesting that the farther scientists move from their specialization, the more they rely on collaborations. Our results provide a starting point for broader quantitative analyses of scientific diversification strategies, which could also be extended to the domain of technological innovation -- offering insights from a comparative and policy perspective.