La Estadística y la Investigación Operativa en la lucha contra la COVID-19
- Ramos, A.G. 1
- Abad, R.C. 2
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1
Universidad de Valladolid
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2
Universidade da Coruña
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ISSN: 1889-3805
Ano de publicación: 2020
Volume: 36
Número: 2
Páxinas: 201-224
Tipo: Artigo
Outras publicacións en: BEIO, Boletín de Estadística e Investigación Operativa
Resumo
This article presents the personal view of the authors, two statisticians, about the role of Statistics and Operations Research in the fight against COVID-19. © 2020 SEIO
Referencias bibliográficas
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