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Exploring the impact of sentiment on multi-dimensional information dissemination using COVID-19 data in China

Published: 01 July 2023 Publication History

Abstract

The outbreak of information epidemic in crisis events, with the channel effect of social media, has brought severe challenges to global public health. Combining information, users and environment, understanding how emotional information spreads on social media plays a vital role in public opinion governance and affective comfort, preventing mass incidents and stabilizing the network order. Therefore, from the perspective of the information ecology and elaboration likelihood model (ELM), this study conducted a comparative analysis based on two large-scale datasets related to COVID-19 to explore the influence mechanism of sentiment on the forwarding volume, spreading depth and network influence of information dissemination. Based on machine learning and social network methods, topics, sentiments, and network variables are extracted from large-scale text data, and the dissemination characteristics and evolution rules of online public opinions in crisis events are further analyzed. The results show that negative sentiment positively affects the volume, depth, and influence compared with positive sentiment. In addition, information characteristics such as richness, authority, and topic influence moderate the relationship between sentiment and information dissemination. Therefore, the research can build a more comprehensive connection between the emotional reaction of network users and information dissemination and analyze the internal characteristics and evolution trend of online public opinion. Then it can help sentiment management and information release strategy when emergencies occur.

Highlights

The study used two large-scale social media data sets related to COVID-19.
Examine the influence of sentiment on multi-dimensional information dissemination.
Explain the moderating effects of information ecological characteristics.
Establish a link between emotional responses and information dissemination.

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  • (2023)UHIRInformation Sciences: an International Journal10.1016/j.ins.2023.119284644:COnline publication date: 1-Oct-2023
  • (undefined)Analysing Psychological Sentiment Prediction Across Modalities: Harnessing Emotion Datasets within Natural Language Processing (NLP)ACM Transactions on Asian and Low-Resource Language Information Processing10.1145/3687305

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cover image Computers in Human Behavior
Computers in Human Behavior  Volume 144, Issue C
Jul 2023
339 pages

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Elsevier Science Publishers B. V.

Netherlands

Publication History

Published: 01 July 2023

Author Tags

  1. Information dissemination
  2. Emotional response
  3. Information richness
  4. Information authority
  5. Topic influence
  6. COVID-19

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  • (2023)UHIRInformation Sciences: an International Journal10.1016/j.ins.2023.119284644:COnline publication date: 1-Oct-2023
  • (undefined)Analysing Psychological Sentiment Prediction Across Modalities: Harnessing Emotion Datasets within Natural Language Processing (NLP)ACM Transactions on Asian and Low-Resource Language Information Processing10.1145/3687305

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