Large language models for newspaper sentiment analysis during COVID-19: The Guardian
Rohitash Chandra, Baicheng Zhu, Qingying Fang, Eka Shinjikashvili

TL;DR
This study analyzes The Guardian newspaper's sentiment during COVID-19 using novel large language models refined with expert data, revealing a predominantly negative narrative and contrasting social media emotional diversity.
Contribution
It introduces a novel LLM-based sentiment analysis approach for newspaper data during COVID-19, with expert refinement and comparative analysis to social media sentiment.
Findings
Early pandemic sentiment focused on crisis response
Shift towards health and economic concerns over time
Negative sentiments dominated across news sections
Abstract
During the COVID-19 pandemic, the news media coverage encompassed a wide range of topics that includes viral transmission, allocation of medical resources, and government response measures. There have been studies on sentiment analysis of social media platforms during COVID-19 to understand the public response given the rise of cases and government strategies implemented to control the spread of the virus. Sentiment analysis can provide a better understanding of changes in societal opinions and emotional trends during the pandemic. Apart from social media, newspapers have played a vital role in the dissemination of information, including information from the government, experts, and also the public about various topics. A study of sentiment analysis of newspaper sources during COVID-19 for selected countries can give an overview of how the media covered the pandemic. In this study, we…
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Taxonomy
TopicsSentiment Analysis and Opinion Mining · Misinformation and Its Impacts
MethodsFocus
