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Content driving exposure and attention to tweets during local, high-impact weather events

机译:内容在本地,高冲击天气事件期间驾驶曝光和关注推文

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摘要

The use of Twitter to disseminate weather information presents need for the analysis of what types of messages, and specifically warning messages, incur exposure and attention. Having this knowledge could increase exposure and attention to messages and perhaps increase retransmission through Twitter. Two models describe the cognitive processing of tweets and warnings. The extended parallel process model describes components of an effective warning message. Even in a tweet, ignoring one or both critical components of a warning-threat and efficacy-could inhibit a user from taking the correct protective action. The protective action decision model (PADM) describes risk perception and factors that enable or disable one from giving attention to a message. The PADM also helps to define impressions, retweets or likes as metrics of exposure or attention to a tweet. Tweets from three Twitter accounts within one television market during two high-impact weather events were examined. From an individual account, impressions, retweets and likes were collected to identify commonalities to tweets with much exposure and attention. Results indicate photographs and geographically specific messages were popular. Second, from two competing television weather accounts, warning tweet formats were compared to identify exposure and attention to each. Warning tweets providing threat and efficacy performed best. The purpose of this work is twofold. First is to identify local trends to compliment findings from studies with large sample sizes. Second is to apply existing theory on warning message content to Twitter. This approach should benefit communication strategies of key information nodes-local meteorologists-during high-impact weather events.
机译:推特来传播天气信息的使用表明,需要分析什么类型的消息,以及特定警告消息,曝光和注意力。拥有这种知识可能会增加曝光和关注消息,也许通过Twitter增加重传。两种模型描述了推特和警告的认知处理。扩展并行过程模型描述了有效警告消息的组件。即使在推文中,忽略了警告威胁和效力的关键组件 - 可能会抑制用户采取正确的保护作用。保护措施决策模型(PADM)描述了风险感知和因素,使能实现或禁用给予关注消息。 PADM还有助于将印象,转发或喜欢定义为曝光或关注推文的指标。检查了两个高冲击天气活动中的一个电视市场的三个推特账户的推文。从个人帐户,收集印象,转发和喜欢,以确定具有大量暴露和关注的推文的共性。结果表明照片和地理上特定的信息很受欢迎。其次,从两个竞争电视天气账户,警告有线电器格式识别每个人的暴露和关注。警告推文提供威胁和功效最佳。这项工作的目的是双重的。首先是识别来自具有大型样本尺寸的研究的本地趋势。其次是将现有的警告消息内容应用于Twitter。这种方法应利用关键信息节点 - 当地气象学家的沟通策略 - 在高影响天气活动期间。

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