Characterizing Communities of Practice in Emerging Science and Technology Fields

O. Babko-Malaya, D. Hunter, Gregory Amis, P. Thomas, Adam Meyers, J. Pustejovsky, M. Verhagen
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引用次数: 9

Abstract

Emerging fields in science and technology are of great interest to innovation researchers, but such fields are often difficult to identify and characterize. This paper outlines a system for identifying a key element of emerging fields: their community of practice, consisting of active scientists and researchers. The system does not simply count these human actors and the interactions between them. Rather, guided by actant network theory, it also examines other non-human actors with which they interact, such as organizations, publications and terminologies. Using quantitative indicators inspired by actant network theory, and derived from features extracted from the full text and metadata of scientific publications and patents, the system attempts to identify communities of practice associated with emerging fields in science and technology. This paper outlines details of these features and indicators, describes how these indicators are combined using Bayesian models, and reports the results of applying these indicators to document sets associated with emerging scientific and technological fields. The results reported in this paper show that system outputs generally agree with subject matter expert judgments with respect to determining the existence of communities of practice, and appear to offer interesting insights into the development of emerging fields.
新兴科学和技术领域的实践社区特征
新兴科技领域是创新研究者非常感兴趣的领域,但这些领域往往难以识别和表征。本文概述了一个识别新兴领域关键要素的系统:它们的实践社区,由活跃的科学家和研究人员组成。该系统并不简单地计算这些人类参与者以及他们之间的互动。相反,在行动者网络理论的指导下,它还研究了与他们互动的其他非人类行动者,如组织、出版物和术语。该系统使用受代理网络理论启发的定量指标,并从科学出版物和专利的全文和元数据中提取特征,试图识别与新兴科学技术领域相关的实践社区。本文概述了这些特征和指标的细节,描述了如何使用贝叶斯模型将这些指标组合起来,并报告了将这些指标应用于与新兴科学和技术领域相关的文件集的结果。本文报告的结果表明,在确定实践社区的存在方面,系统输出通常与主题专家判断一致,并且似乎为新兴领域的发展提供了有趣的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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