Network Discourse on British Prime Minister Boris Johnson: Positive vs Negative Sentiments on Twitter

V. Katermina, A. Gnedash
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引用次数: 1

Abstract

The article solves the problem of identifying markers of positive or negative sentiment in the network discourse that is formed in social networks in relation to a particular politician. The theoretical and methodological foundations of the study were the basics of network linguistics, the network approach, Big Data. To conduct an empirical study using the method of continuous sampling for the keyword "Boris Johnson", data from the social network Twitter was uploaded from May 15 to July 15, 2021 through the Twitter API service. The received dataset amounted to 1 million 900 thousand messages which were divided into a dataset of messages with a positive sentiment and a dataset of messages with a negative sentiment. In each dataset, frequently used fragments are identified and subjected to linguistic discursive analysis. As a result of their analysis, markers of the positive and negative sentiment of the online discourse that is emerging in the Internet space in relation to British Prime Minister Boris Johnson have been identified. They reflect public opinion, the level of trust in a politician, the pole of evaluation of his activities. Considering such markers when developing strategies for working with public opinion will allow changes in the image and reputational potential of public figures and organizations both online and offline.
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关于英国首相鲍里斯·约翰逊的网络话语:推特上的积极与消极情绪
本文解决了识别社会网络中与特定政治家相关的网络话语中积极或消极情绪标记的问题。本研究的理论和方法基础是网络语言学、网络方法和大数据的基础。为了对关键词“Boris Johnson”采用连续抽样的方法进行实证研究,我们将社交网络Twitter的数据于2021年5月15日至7月15日通过Twitter API服务上传。接收到的数据集共190万条消息,分为积极情绪消息数据集和消极情绪消息数据集。在每个数据集中,频繁使用的片段被识别并进行语言话语分析。根据他们的分析,已经确定了互联网空间中出现的与英国首相鲍里斯·约翰逊有关的在线话语的积极和消极情绪的标志。它们反映了公众的意见,对政治家的信任程度,对他的活动的评价。在制定与公众舆论合作的战略时,考虑到这些标志将有助于改变公众人物和组织的形象和声誉潜力,无论是线上还是线下。
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来源期刊
CiteScore
0.20
自引率
50.00%
发文量
87
审稿时长
6 weeks
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