Using mobility data in the design of optimal lockdown strategies for the COVID-19 pandemic
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Lorenzo Pacchiardi | Ritabrata Dutta | Dante Kalise | Susana Gomes | Ritabrata Dutta | D. Kalise | Lorenzo Pacchiardi | S. Gomes
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