An introduction to statistical methods for circular data

  1. Rosa Crujeiras
Revista:
BEIO, Boletín de Estadística e Investigación Operativa

ISSN: 1889-3805

Ano de publicación: 2017

Volume: 33

Número: 2

Páxinas: 83-107

Tipo: Artigo

Outras publicacións en: BEIO, Boletín de Estadística e Investigación Operativa

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