探索在线反应如何响应WhatsApp上关于COVID-19的揭穿信息

X. Chen, Jin-Cheon Na, Luke Kien-Weng Tan, Mark Chong, Murphy Choy
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引用次数: 5

摘要

新冠肺炎疫情同时引发了网络虚假信息的爆发。揭穿关于健康危机的虚假信息至关重要,因为错误信息可能引发抗议或恐慌,这需要更好地了解它。这项探索性研究考察了在新加坡WhatsApp上与covid -19相关的公开聊天中揭穿信息的影响。设计/方法/方法为了了解在WhatsApp对话中揭穿COVID-19消息的影响,研究了以下内容。研究了不同揭穿信息类型的来源可信度(即影响接收者接受信息的传播者的特征)及其对对话长度、对危机各方面的情绪以及消息线程中的信息扭曲的影响之间的关系。使用深度学习技术、知识图(KG)和内容分析对消息进行基于方面的情感分析(ABSA)并测量信息失真。具有较高来源可信度的揭穿信息(例如,提供来自卫生当局等权威来源的证据)有助于尽早结束讨论。人们对危机某些方面的看法发生了变化,这凸显了ABSA在监控揭穿信息有效性方面的价值。最后,揭穿来源可信度较低的消息(例如,在没有任何证据的情况下声明信息是假的)可能会增加对话线程中的信息扭曲。原创性/价值该研究支持来源可信度在揭穿和ABSA方法在分析卫生危机期间揭穿信息的影响方面的重要性,这对公共机构在卫生危机期间具有实用价值。研究WhatsApp上揭露信息来源可信度的差异,是对现有方法的一种新颖转变。此外,一种使用kg测量信息失真的新方法被用来揭示揭露如何减少信息失真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring how online responses change in response to debunking messages about COVID-19 on WhatsApp
PurposeThe COVID-19 pandemic has spurred a concurrent outbreak of false information online. Debunking false information about a health crisis is critical as misinformation can trigger protests or panic, which necessitates a better understanding of it. This exploratory study examined the effects of debunking messages on a COVID-19-related public chat on WhatsApp in Singapore.Design/methodology/approachTo understand the effects of debunking messages about COVID-19 on WhatsApp conversations, the following was studied. The relationship between source credibility (i.e. characteristics of a communicator that affect the receiver's acceptance of the message) of different debunking message types and their effects on the length of the conversation, sentiments towards various aspects of a crisis, and the information distortions in a message thread were studied. Deep learning techniques, knowledge graphs (KG), and content analyses were used to perform aspect-based sentiment analysis (ABSA) of the messages and measure information distortion.FindingsDebunking messages with higher source credibility (e.g. providing evidence from authoritative sources like health authorities) help close a discussion thread earlier. Shifts in sentiments towards some aspects of the crisis highlight the value of ABSA in monitoring the effectiveness of debunking messages. Finally, debunking messages with lower source credibility (e.g. stating that the information is false without any substantiation) are likely to increase information distortion in conversation threads.Originality/valueThe study supports the importance of source credibility in debunking and an ABSA approach in analysing the effect of debunking messages during a health crisis, which have practical value for public agencies during a health crisis. Studying differences in the source credibility of debunking messages on WhatsApp is a novel shift from the existing approaches. Additionally, a novel approach to measuring information distortion using KGs was used to shed insights on how debunking can reduce information distortions.
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