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      An Outbreak of Selective Attribution: Partisanship and Blame in the COVID-19 Pandemic

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          Abstract

          Crises and disasters give voters an opportunity to observe the incumbent's response and reward or punish them for successes and failures. Yet even when voters perceive events similarly, they tend to attribute responsibility selectively, disproportionately crediting their party for positive developments and blaming opponents for negative developments. We examine selective attribution during the COVID-19 pandemic in the United States, reporting three key findings. First, selective attribution rapidly emerged during the first weeks of the pandemic, a time in which Democrats and Republicans were otherwise updating their perceptions and behavior in parallel. Second, selective attribution is caused by individual-level changes in perceptions of the pandemic. Third, existing research has been too quick to explain selective attribution in terms of partisan-motivated reasoning. We find stronger evidence for an explanation rooted in beliefs about presidential competence. This recasts selective attribution's implications for democratic accountability.

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          Journal
          Center for Open Science
          March 05 2021
          Article
          10.31235/osf.io/t8xar
          8a4b331b-9793-4692-bd2b-6315b0eb47ac
          © 2021

          https://creativecommons.org/licenses/by/4.0/legalcode

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