The Social Engagement to Agricultural Issues using Social Network Analysis

Tanty Yanuar Widiyanti, T. B. Adji, I. Hidayah
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引用次数: 2

Abstract

Twitter is one of the micro-blogging social media which emphasizes the speed of communication. In the 4.0 era, the government also promotes the distribution of information through social media to reach the community from various lines.  In previous research, Social Network Analysis was used to see the relationship between actors in a work environment, or as a basis for identifying the application of technology adoption in decision making, whereas no one has used SNA to see trends in people's response to agricultural information. This study aims to see the extent to which information about agriculture reaches the community, as well as to see the community's response to take part in agricultural development.  This article also shows the actors who took part in disseminating information. Data was taken on November 13 to 20, 2020 from the Drone Emprit Academic, and was taken limited to 3000 nodes. Then, the measurements of the SNA are represented on the values of Degree Centrality, Betweenness Centrality, Closeness Centrality, and Eigenvector Centrality. @AdrianiLaksmi has the highest value in Eigenvector Centrality and Degree Centrality, he has the greatest role in disseminating information and has many followers among other accounts that spread the same information. While the @RamliRizal account ranks the highest in Betweenness Centrality, who has the most frequently referred information, and the highest Closeness Centrality is owned by the @baigmac account because of the fastest to re-tweet the first information.
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基于社会网络分析的农业问题社会参与
推特是一种强调交流速度的微博社交媒体。在4.0时代,政府还通过社交媒体促进信息的分发,从各个渠道到达社区。在以前的研究中,社会网络分析被用来观察工作环境中参与者之间的关系,或作为确定技术在决策中应用的基础,而没有人使用国民账户体系来观察人们对农业信息的反应趋势。本研究旨在了解有关农业的信息在多大程度上传播到社区,以及社区对参与农业发展的反应。这篇文章还展示了参与传播信息的行动者。数据于2020年11月13日至20日从Drone Emprit Academic获取,仅限于3000个节点。然后,国民账户体系的测量值用度集中度、间隔集中度、紧密度集中度和特征向量集中度的值表示@AdrianiLaksmi在特征向量中心性和度中心性方面的价值最高,他在传播信息方面发挥了最大的作用,在传播相同信息的其他账户中有许多追随者。而@RamliRizal账户在Betweenness Centrality中排名最高,Betweennes Centrality拥有最频繁引用的信息,而最高的Closeness Centrality由@baigmac账户所有,因为它最快地转发第一条信息。
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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发文量
6
审稿时长
8 weeks
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