印度奥迪沙COVID-19疫苗YouTube视频的社交网络分析:绘制频道网络图并分析评论情绪。

Q2 Biochemistry, Genetics and Molecular Biology
Neil Alperstein, Paola Pascual-Ferrá, Rohini Ganjoo, Ananya Bhaktaram, Julia Burleson, Daniel J Barnett, Amelia M Jamison, Eleanor Kluegel, Satyanarayan Mohanty, Peter Z Orton, Manoj Parida, Sidharth Rath, Rajiv Rimal
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引用次数: 1

摘要

印度报告的 COVID-19 确诊病例已超过 3500 万例,累计死亡人数近 50 万。虽然第一剂疫苗的接种率相当高,但仍有三分之一的人口没有接种第二剂疫苗。由于社交媒体的广泛使用和普及,它可以在提高疫苗接受度方面发挥重要作用。本研究利用 YouTube 视频在印度奥迪沙邦的实际环境中进行了研究,该平台在 18-35 岁目标人群中的渗透率很高,其次是他们的家人和同龄人。我们在 YouTube 平台上发布了两个对比鲜明的视频,以研究这些视频如何在更广泛的推荐和订阅系统中运作,从而决定受众的覆盖范围。视频分析、推荐视频的算法、所创建连接的可视化表示、网络之间的中心性以及评论分析均已进行。结果表明,在观看次数和观看时间方面,由女主角传达的非幽默语气和集体主义诉求的视频表现最佳。这些结果对健康传播者来说意义重大,因为他们希望更好地了解决定视频传播的平台机制以及基于观众情绪的观众反应衡量标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Social network analysis of COVID-19 vaccine YouTube videos in Odisha, India: mapping the channel network and analyzing comment sentiment.

Social network analysis of COVID-19 vaccine YouTube videos in Odisha, India: mapping the channel network and analyzing comment sentiment.

Social network analysis of COVID-19 vaccine YouTube videos in Odisha, India: mapping the channel network and analyzing comment sentiment.

Social network analysis of COVID-19 vaccine YouTube videos in Odisha, India: mapping the channel network and analyzing comment sentiment.

India has reported more than 35 million confirmed cases of COVID-19 and nearly half a million cumulative deaths. Although vaccination rates for the first vaccine dose are quite high, one-third of the population has not received a second shot. Due to its widespread use and popularity, social media can play a vital role in enhancing vaccine acceptance. This study in a real-world setting utilizes YouTube videos in Odisha, India where the platform has deep penetration among the 18-35 target population, and secondarily their family and peers. Two contrasting videos were launched on the YouTube platform to examine how those videos operate within the broader recommender and subscription systems that determine the audience reach. Video analytics, algorithms for recommended videos, visual representation of connections created, centrality between the networks, and comment analysis was conducted. The results indicate that the video with a non-humorous tone and collectivistic appeal delivered by a female protagonist performed best with regard to views and time spent watching the videos. The results are of significance to health communicators who seek to better understand the platform mechanisms that determine the spread of videos and measures of viewer reactions based on viewer sentiment.

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来源期刊
BMC Proceedings
BMC Proceedings Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (all)
CiteScore
3.50
自引率
0.00%
发文量
6
审稿时长
10 weeks
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