Significados de Referência da Estatística Qui-quadrado: um Olhar Histórico-epistemológico

Palavras-chave: Qui-quadrado, História e epistemologia, Raciocínio inferencial, Significados, Educação estatística

Resumo

Este artigo apresenta um estudo histórico-epistemológico sobre a estatístico Qui-quadrado. Para tanto, são utilizadas algumas noções teórico-metodológicas da Abordagem Onto-Semiótica (EOS) do conhecimento e do ensino matemático, que nos permitiram identificar quatro problemas que têm sido fundamentais para a evolução da estatística Qui-quadrado: teste de adequação, teste de independência, teste de homogeneidade e distribuição. Além disso, nas práticas matemático-estatísticas realizadas para resolver cada um destes problemas, foram identificados vários significados da estatística Qui-quadrado, o que permitirá estabelecer critérios epistemológicos que permitem, por um lado, propor níveis progressivos (do informal ao formal) do raciocínio inferencial para a referida estatística; e por outro lado, desenhar tarefas que visem promover a compreensão dos diversos significados do Qui-quadrado.

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Biografia do Autor

Jesus Guadalupe Lugo-Armenta, Universidad de Los Lagos

Doutorando em Educación Matemática pela Universidad de Los Lagos, campus Osorno. Osorno, Los Lagos, Chile.

Luis Roberto Pino-Fan, Universidad de Los Lagos

Doutor em Didáctica de la Matemática pela Universidad de Granda. Professor da Universidad de Los Lagos, Osorno, Los Lagos, Chile.

Blanca Rosa Ruiz Hernandez, Tecnológico de Monterrey

Doutora em Didáctica de la Matemática pela Universidad de Granda. Professora do Tecnológico de Monterrey, Monterrey, Nuevo León, México.

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Publicado
2021-06-21
Como Citar
LUGO-ARMENTA, J. G.; PINO-FAN, L. R.; RUIZ HERNANDEZ, B. R. Significados de Referência da Estatística Qui-quadrado: um Olhar Histórico-epistemológico. Revemop, v. 3, p. e202108, 21 jun. 2021.
Seção
Enfoque Ontosemiótico: abordagens teóricas, metodológicas e práticas