综合推特分析以区分不同层次的系统思考者:以COVID-19为例。

IF 1.3 Q3 COMPUTER SCIENCE, THEORY & METHODS Applied Network Science Pub Date : 2023-01-01 DOI:10.1007/s41109-022-00520-9
Harun Pirim, Morteza Nagahi, Oumaima Larif, Mohammad Nagahisarchoghaei, Raed Jaradat
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引用次数: 0

摘要

系统思维(ST)已经成为从业者和专家在处理动荡和复杂的环境时必不可少的。Twitter媒体拥有包括系统思考者在内的社会资本,然而,在现有文献中,调查专家的系统思维技能(如果可能的话)如何在Twitter分析中揭示的研究有限。这项研究旨在揭示专家的系统思维水平,从他们的Twitter账户代表一个网络。潜在的推特网络集群的揭示,随之而来的是对其追随者网络的中心性分析,从系统思维维度推断。COVID-19作为一个相关的案例研究出现,以调查COVID-19专家的Twitter网络与他们的系统思维能力之间的关系。根据《福布斯》、《财富》和《Bustle》的榜单,我们选择了55个与COVID-19相关的值得信赖的专家Twitter账户作为当前研究的样本。Twitter网络是基于从他们的Twitter账户中提取的特征构建的。社区检测揭示了三组不同的专家。为了将系统思维质量与每个群体联系起来,系统思维维度与追随者网络特征相匹配,如节点级度量和中心性度量,包括程度、中间性、亲密性和特征中心性。55个专家追随者网络特征的比较阐明了三个集群在中心性得分和节点级指标方面存在显著差异。得分较高、中等和较低的集群可以分别被分类为整体思考者、中间思考者和还原论思考者的Twitter账户。总之,系统思维能力是通过与系统思维维度相关的追随者网络特征相关的独特网络模式来追踪的。
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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Integrated twitter analysis to distinguish systems thinkers at various levels: a case study of COVID-19.

Systems Thinking (ST) has become essential for practitioners and experts when dealing with turbulent and complex environments. Twitter medium harbors social capital including systems thinkers, however there are limited studies available in the extant literature that investigate how experts' systems thinking skills, if possible at all, can be revealed within Twitter analysis. This study aims to reveal systems thinking levels of experts from their Twitter accounts represented as a network. Unraveling of latent Twitter network clusters ensues the centrality analysis of their follower networks inferred in terms of systems thinking dimensions. COVID-19 emerges as a relevant case study to investigate the relationship between COVID-19 experts' Twitter network and their systems thinking capabilities. A sample of 55 trusted expert Twitter accounts related to COVID-19 has been selected for the current study based on the lists from Forbes, Fortune, and Bustle. The Twitter network has been constructed based on the features extracted from their Twitter accounts. Community detection reveals three distinct groups of experts. In order to relate system thinking qualities to each group, systems thinking dimensions are matched with the follower network characteristics such as node-level metrics and centrality measures including degree, betweenness, closeness and Eigen centrality. Comparison of the 55 expert follower network characteristics elucidates three clusters with significant differences in centrality scores and node-level metrics. The clusters with a higher, medium, lower scores can be classified as Twitter accounts of Holistic thinkers, Middle thinkers, and Reductionist thinkers, respectfully. In conclusion, systems thinking capabilities are traced through unique network patterns in relation to the follower network characteristics associated with systems thinking dimensions.

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来源期刊
Applied Network Science
Applied Network Science Multidisciplinary-Multidisciplinary
CiteScore
4.60
自引率
4.50%
发文量
74
审稿时长
5 weeks
期刊最新文献
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