sciiconnav:通过广泛的科学研究轨迹的上下文学习进行知识导航

IF 4.3 2区 管理学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Shibing Xiang, Xin Jiang, Bing Liu, Yurui Huang, Chaolin Tian, Yifang Ma
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引用次数: 0

摘要

新知识建立在已有的基础之上,这意味着知识之间存在着相互依存的关系,这体现在数百年来科学体系的历史记录中。本研究利用自然语言处理技术,引入基于嵌入的导航模型“科学概念导航器”,从数百万学者的研究轨迹中推断出“知识路径”。我们验证了学习表征有效地描绘了学科边界,并捕获了不同概念之间的复杂关系。通过多个应用程序展示导航空间的实用性。首先,我们展示了不同学科概念之间的多步类比推理。其次,我们构建了知识的跨领域概念维度,观察了19个学科沿着这些概念维度的分布变化,包括“理论”到“应用”,“社会”到“经济”,突出了不同领域功能属性的演变。最后,通过对知识网络结构的分析,我们发现知识通过更短的全局路径连接,跨学科概念在提高可达性方面发挥了关键作用。该框架提供了一种从广泛的科学文献中挖掘知识继承路径的新方法,这对于理解科学进展模式、定制科学学习轨迹、加速科学进步具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

SciConNav: Knowledge navigation through contextual learning of extensive scientific research trajectories

SciConNav: Knowledge navigation through contextual learning of extensive scientific research trajectories

SciConNav: Knowledge navigation through contextual learning of extensive scientific research trajectories

SciConNav: Knowledge navigation through contextual learning of extensive scientific research trajectories

New knowledge builds upon existing foundations, which means an interdependent relationship exists between knowledge, manifested in the historical records of the scientific system for hundreds of years. By leveraging natural language processing techniques, this study introduces the Scientific Concept Navigator, an embedding-based navigation model to infer the “knowledge pathway” from the research trajectories of millions of scholars. We validate that the learned representations effectively delineate disciplinary boundaries and capture the intricate relationships between diverse concepts. Utility of the navigation space is showcased through multiple applications. Firstly, we demonstrate the multi-step analogy inferences between concepts from various disciplines. Secondly, we formulate the cross-domain conceptual dimensions of knowledge, observing the distributional shifts of 19 disciplines along these conceptual dimensions, including “Theoretical” to “Applied,” and “Societal” to “Economic,” highlighting the evolution of functional attributes across diverse domains. Lastly, by analyzing the knowledge network structure, we find that knowledge connects with shorter global pathways, and interdisciplinary concepts play a critical role in enhancing accessibility. Our framework offers a novel approach to mining knowledge inheritance pathways from extensive scientific literature, which is of great significance for understanding scientific progression patterns, tailoring scientific learning trajectories, and accelerating scientific progress.

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来源期刊
CiteScore
8.30
自引率
8.60%
发文量
115
期刊介绍: The Journal of the Association for Information Science and Technology (JASIST) is a leading international forum for peer-reviewed research in information science. For more than half a century, JASIST has provided intellectual leadership by publishing original research that focuses on the production, discovery, recording, storage, representation, retrieval, presentation, manipulation, dissemination, use, and evaluation of information and on the tools and techniques associated with these processes. The Journal welcomes rigorous work of an empirical, experimental, ethnographic, conceptual, historical, socio-technical, policy-analytic, or critical-theoretical nature. JASIST also commissions in-depth review articles (“Advances in Information Science”) and reviews of print and other media.
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