COVID-19 Government Response Event Dataset (CoronaNet v.1.0)

Nature Human Behaviour - Tập 4 Số 7 - Trang 756-768
Cindy Cheng1, Joan Barceló2, Allison Spencer Hartnett3, Robert Kubinec2, Luca Messerschmidt1
1Hochschule für Politik at the Technical University of Munich (TUM) and the TUM School of Governance, Munich, Germany
2Social Science Division, New York University Abu Dhabi, Abu Dhabi, United Arab Emirates
3Department of Political Science, Yale University, New Haven, CT, USA

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