An Efficient COVID-19 Prediction Model Validated with the Cases of China, Italy and Spain: Total or Partial Lockdowns?
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Samuel Sanchez-Caballero | M. A. Selles | Elena Perez-Bernabeu | E. Pérez-Bernabeu | S. Sanchez-Caballero | M. Peydro | Miguel A Selles | Miguel A Peydro
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