Kara Kedrick, Ekaterina Levitskaya, Russell J. Funk
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引用次数: 0
Abstract
How does scientific knowledge grow? This question has occupied a central place in the philosophy of science, stimulating heated debates but yielding no clear consensus. Many explanations can be understood in terms of whether and how they view the expansion of knowledge as proceeding through the accretion of scientific concepts into larger conceptual structures. Here we examine these views empirically by analysing 2,605,224 papers spanning five decades from both the social sciences (Web of Science) and the physical sciences (American Physical Society). Using natural language processing techniques, we create semantic networks of concepts, wherein noun phrases become linked when used in the same paper abstract. We then detect the core/periphery structures of these networks, wherein core concepts are densely connected sets of highly central nodes and periphery concepts are sparsely connected nodes that are highly connected to the core. For both the social and physical sciences, we observe increasingly rigid conceptual cores accompanied by the proliferation of periphery concepts. Subsequently, we examine the relationship between conceptual structure and the growth of scientific knowledge, finding that scientific works are more innovative in fields with cores that have higher conceptual churn and with larger cores. Furthermore, scientific consensus is associated with reduced conceptual churn and fewer conceptual cores. Overall, our findings suggest that while the organization of scientific concepts is important for the growth of knowledge, the mechanisms vary across time. Analysing 2,605,224 papers spanning five decades from both the social sciences and the physical sciences, the authors examine how scientific knowledge grows. Their findings suggest that while the organization of scientific concepts is important for the growth of knowledge, the mechanisms vary across time.
科学知识是如何增长的?这个问题一直占据科学哲学的中心位置,引发了激烈的争论,但却没有达成明确的共识。许多解释都可以从是否以及如何将知识的扩展看作是通过科学概念累积到更大的概念结构中来理解。在这里,我们通过分析社会科学(Web of Science)和物理科学(美国物理学会)五十年来的 2,605,224 篇论文,对这些观点进行了实证研究。利用自然语言处理技术,我们创建了概念的语义网络,其中的名词短语在同一论文摘要中使用时会产生关联。然后,我们检测这些网络的核心/外围结构,其中核心概念是高度中心节点的密集连接集,外围概念是与核心高度连接的稀疏连接节点。在社会科学和物理科学领域,我们发现概念核心越来越僵化,而边缘概念却越来越多。随后,我们研究了概念结构与科学知识增长之间的关系,结果发现,在核心概念流失率较高和核心概念规模较大的领域,科学著作更具创新性。此外,科学共识与概念流失减少和概念核心较少有关。总之,我们的研究结果表明,虽然科学概念的组织对知识的增长很重要,但其机制却因时而异。
期刊介绍:
Nature Human Behaviour is a journal that focuses on publishing research of outstanding significance into any aspect of human behavior.The research can cover various areas such as psychological, biological, and social bases of human behavior.It also includes the study of origins, development, and disorders related to human behavior.The primary aim of the journal is to increase the visibility of research in the field and enhance its societal reach and impact.