利用网络画像发散方法揭示人工智能中科学技术的内在相互作用

IF 3.4 2区 管理学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Kai Meng , Zhichao Ba , Chunying Wang , Gang Li
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引用次数: 0

摘要

人工智能(AI)正在经历前所未有的创新和转型,这可能归因于该领域内科学与技术之间的密切互动。为了识别S&;T联系并检测人工智能内部的内在相互作用,本文引入了一种网络画像发散方法,其中S&;T知识网络基于图不变概率分布原型化为二维网络画像,并通过将网络画像发散与知识内容耦合进行比较。具体来说,AI的S&;T知识首先通过KeyBERT和单词对齐算法进行提取和统一。随后,构建了时态知识网络,并将其可视化为两个网络画像:节点画像和边权画像。网络肖像散度是一种信息论的、类似图的网络比较度量,用于计算不同的S&;T肖像散度。最后,基于多尺度主干分析,揭示了S&;T内部的知识流动和知识流动之间的动态交互作用。在合成网络(随机图集合)和现实世界的人工智能数据集上进行的经验实验强调了网络肖像发散方法的可行性和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unveiling intrinsic interactions of science and technology in artificial intelligence using a network portrait divergence approach
Artificial Intelligence (AI) is experiencing unprecedented innovation and transformation, potentially attributed to intimate interactions between science and technology (S&T) within the field. To identify S&T linkages and detect intrinsic interactions within AI, this paper introduces a network portrait divergence approach, where S&T knowledge networks are prototyped as two-dimensional network portraits based on graph-invariant probability distributions, and comparing them by coupling network portrait divergence with knowledge content. Specifically, S&T knowledge of AI is first extracted and unified through KeyBERT and word-alignment algorithms. Subsequently, temporal S&T knowledge networks are constructed and visualized as two network portraits: node portraits and edge-weight portraits. Network portrait divergence, an information-theoretic, graph-like measure for comparing networks, is applied to calculate varying S&T portrait divergences. Finally, internal knowledge flows within S&T and dynamic interactions between them are unearthed based on multiscale backbone analysis. Empirical experiments on both synthetic networks (random graph ensembles) and real-world AI datasets underscore the feasibility and reliability of the network portrait divergence approach.
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来源期刊
Journal of Informetrics
Journal of Informetrics Social Sciences-Library and Information Sciences
CiteScore
6.40
自引率
16.20%
发文量
95
期刊介绍: Journal of Informetrics (JOI) publishes rigorous high-quality research on quantitative aspects of information science. The main focus of the journal is on topics in bibliometrics, scientometrics, webometrics, patentometrics, altmetrics and research evaluation. Contributions studying informetric problems using methods from other quantitative fields, such as mathematics, statistics, computer science, economics and econometrics, and network science, are especially encouraged. JOI publishes both theoretical and empirical work. In general, case studies, for instance a bibliometric analysis focusing on a specific research field or a specific country, are not considered suitable for publication in JOI, unless they contain innovative methodological elements.
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