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X-WR-CALNAME;VALUE=TEXT:Twitter sentiments on the stay-at-home orders in the United States
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SUMMARY:Twitter sentiments on the stay-at-home orders in the United States
DESCRIPTION:<p>	AAG 2023 Annual Meeting</p><p>	<strong>Authors:</strong> </p><section data-class="no-bot-margin" data-placeholder="Connor ">	<p>		Connor Yuhao Wu, <em>Department of Geospatial Informatics, Troy University, Troy, AL, USA</em>	</p></section><section data-class="no-bot-margin" data-placeholder="Xinming">	<p>		Xinming Xia, <em>School of Public Policy &amp; Management, Tsinghua University, Beijing, China</em>	</p></section><section data-class="no-bot-margin" data-placeholder="Wenting">	<p>		Wenting Zhang, <em>Department of Business Analytics and Information Systems, Auburn University, Auburn, AL, USA</em>	</p></section><section data-class="no-bot-margin" data-placeholder="Yi">	<p>		Yi Zhang, <em>Individualized Interdisciplinary Program (UGOD), The Hong Kong University of Science and Technology, Hong Kong, China</em>	</p></section><section data-class="no-bot-margin" data-placeholder="Lingbo">	<p>		Lingbo Liu, <em>Center of Geographic Analysis, Harvard University, Cambridge, MA, USA</em>	</p></section><section data-class="no-bot-margin" data-placeholder="Kejie">	<p>		Kejie Zhou, <em>Department of Applied Economics, Fudan University, Shanghai, China</em>	</p></section><hr><h4>	<strong>Abstract</strong></h4><p>	This study evaluated the effects of stay-at-home orders on Twitter sentiments in the United States during the COVID-19 pandemic. It aimed to understand the reactions of different groups, particularly vulnerable populations such as elderly individuals with medical conditions, people in rural areas, and low-income groups. Using a Twitter Sentiment Geographical Index based on 7.4 billion geotagged tweets, the study found that stay-at-home orders received a positive response and contributed to an improvement in Twitter sentiments. However, counties faced more significant difficulties in an urban (versus rural) setting, with a lower concentration of elderly individuals, or lower incomes during the pandemic. This study offers a sociological perspective, informed by large-scale Twitter data, for monitoring changes in public opinion, evaluating the impact of social events, and understanding the disaster management of pandemic shocks.</p><p>	A link to the presentation, viewable with AAG member log in: </p><p>	https://aag.secure-platform.com/aag2023/solicitations/39/sessiongallery/5739/application/21325</p>
LOCATION:Denver, CO
STATUS:CONFIRMED
DTSTART:20230326T162000Z
DTEND:20230326T162000Z
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