Sentiment analysis of tweet content on Hurricane Dorian: Sensemaking in digital journalistic inquiry ecology

Yanfang Wu
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Abstract

Twitter is a powerful digital journalistic instrument and evidence shows journalists were transferring authority to Twitter. With journalistic information ecology becoming imbalanced, it is valuable to research how journalists may use Twitter to discover accurate and reliable information and maintain a vast overview of news events without shifting the power as the fourth estate. The purpose of this study is to provide a possible digital journalistic inquiry model to identify trending topics, distinguish reliable journalistic information while maintaining the balance of journalistic information ecology. Utilizing a large-scale dataset – 1.2 million tweets collected from Twitter API – this study executed cutting-edge network analysis and sentiment analysis to fill in the knowledge gap through a case study on Hurricane Dorian. The study found that the impact of traditional opinion leaders on information diffusion is declining. On the contrary, top in-degree centrality users play more important roles in information diffusion on Twitter. Moreover, tweets with negative polarity opinions were retweeted more. In addition, non-opinion leaders’ negatively polarized tweets were retweeted more than positively polarized ones, although it is not the same case with opinion leaders. With the change of journalistic ecology, identifying top in-degree centrality users and examining their tweets will provide useful resources for journalists to identify keywords, trending themes and predict how likely a topic may interest audience based on degree of polarity and number of retweets on Twitter. The results provide useful patterns for journalists to follow in sensemaking tasks in digital journalistic inquiry.
多里安飓风推文内容的情感分析:数字新闻探究生态中的意义制造
Twitter是一个强大的数字新闻工具,有证据表明记者正在将权力转移到Twitter上。随着新闻信息生态的失衡,研究记者如何在不转移作为第四等级的权力的情况下,利用Twitter来发现准确可靠的信息,并保持对新闻事件的广泛概述是有价值的。本研究的目的是提供一个可能的数字新闻查询模型,以识别趋势话题,区分可靠的新闻信息,同时保持新闻信息生态的平衡。本研究利用从Twitter API收集的120万条tweet的大规模数据集,通过对飓风多里安的案例研究,进行了尖端的网络分析和情感分析,以填补知识空白。研究发现,传统意见领袖对信息传播的影响正在下降。相反,高度中心性用户在Twitter上的信息传播中扮演着更重要的角色。此外,负面极性观点的推文被转发的次数更多。此外,非意见领袖的消极极化推文的转发量高于积极极化的推文,尽管意见领袖的情况并非如此。随着新闻生态的变化,识别度中心性最高的用户并检查他们的推文将为记者提供有用的资源,以识别关键词、趋势主题,并根据推特上的极性程度和转发数量预测某个话题引起受众兴趣的可能性。研究结果为记者在数字新闻探究中进行意义建构任务提供了有用的模式。
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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