在 COVID-19 大流行期间通过 Twitter 进行转运通信。

IF 0.8 4区 材料科学 Q4 MATERIALS SCIENCE, MULTIDISCIPLINARY Materials Science-medziagotyra Pub Date : 2023-06-01 Epub Date: 2022-11-10 DOI:10.1177/23998083221135609
Wenwen Zhang, Camille Barchers, Janille Smith-Colin
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引用次数: 0

摘要

公交公司将社交媒体(如 Twitter)作为塑造公众认知和提供重要信息的强大平台,尤其是在混乱和灾难时期。这项研究探讨了在 COVID-19 大流行期间,公交公司如何利用 Twitter 与乘客沟通,以及内容和一般活动如何影响乘客互动和 Twitter 的人气。我们分析了 2020 年 1 月至 2021 年 8 月期间,美国排名前 40 位的公交机构(基于年度最高服务运营车辆(VOM))发布的 654345 条推文。我们利用先进的机器学习和自然语言处理模型开发了一个分析框架,以了解大流行病期间各机构的推文模式与乘客互动结果之间的关联。从公交机构的角度来看,我们发现规模较小的机构往往会产生较高比例的与 COVID 相关的推文,而且有些机构的推文重复性比同行更高。在与 COVID 相关的推文中,我们发现了六个主题(即遮挡面部、基本服务赞赏、免费资源、社会疏远、清洁和服务更新)。从关注者互动的角度来看,大多数机构在大流行开始后(即 2020 年 3 月)获得了关注者。追随者增加的百分比与 COVID 相关推文、回复追随者的推文和使用外链的推文的百分比呈正相关。每条 COVID 相关推文的平均点赞数与 COVID 相关推文的百分比呈正相关,而与讨论社会疏远和机构重复性的推文百分比呈负相关。这项研究可为交通规划者和公交机构提供信息,帮助他们了解如何利用 Twitter 与乘客进行有效沟通,以改善公众对健康和安全的看法,因为在延误和长期中断(如 COVID-19 公共卫生危机造成的中断)期间,健康和安全与公交乘客人数息息相关。
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Transit communication via Twitter during the COVID-19 pandemic.

Transit providers have used social media (e.g., Twitter) as a powerful platform to shape public perception and provide essential information, especially during times of disruption and disaster. This work examines how transit agencies used Twitter during the COVID-19 pandemic to communicate with riders and how the content and general activity influence rider interaction and Twitter handle popularity. We analyzed 654,345 tweets generated by the top 40 transit agencies in the US, based on Vehicles Operated in Annual Maximum Service (VOM), from January 2020 to August 2021. We developed an analysis framework, using advanced machine learning and natural language processing models, to understand how agencies' tweeting patterns are associated with rider interaction outcomes during the pandemic. From the transit agency perspective, we find smaller agencies tend to generate a higher percentage of COVID-related tweets and some agencies are more repetitive than their peers. Six topics (i.e., face covering, essential service appreciation, free resources, social distancing, cleaning, and service updates) were identified in the COVID-related tweets. From the followers' interaction perspective, most agencies gained followers after the start of the pandemic (i.e., March 2020). The percentage of follower gains is positively correlated with the percentage of COVID-related tweets, tweets replying to followers, and tweets using outlinks. The average like counts per COVID-related tweet is positively correlated with the percentage of COVID-related tweets and negatively correlated with the percentage of tweets discussing social distancing and agency repetitiveness. This work can inform transportation planners and transit agencies on how to use Twitter to effectively communicate with riders to improve public perception of health and safety as it relates to transit ridership during delays and long-term disruptions such as those created by the COVID-19 public health crisis.

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来源期刊
Materials Science-medziagotyra
Materials Science-medziagotyra 工程技术-材料科学:综合
CiteScore
1.70
自引率
10.00%
发文量
92
审稿时长
6-12 weeks
期刊介绍: It covers the fields of materials science concerning with the traditional engineering materials as well as advanced materials and technologies aiming at the implementation and industry applications. The variety of materials under consideration, contributes to the cooperation of scientists working in applied physics, chemistry, materials science and different fields of engineering.
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