Distribuciones muestrales en poblaciones binomialesdificultades de comprensión por estudiantes de Educación Secundaria y Bachillerato.
- Nuria Begué 1
- Carmen Batanero Bernabeu 2
- Mª Magdalena Gea 2
- Danilo Díaz-Levicoy 3
- 1 Universidad de Zaragoza (UNIZAR)
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2
Universidad de Granada
info
- 3 Universidad Católica del Maule (UCM), Talca, Chile
ISSN: 1815-0640
Ano de publicación: 2019
Número: 56
Páxinas: 100-108
Tipo: Artigo
Outras publicacións en: Unión: revista iberoamericana de educación matemática
Resumo
A main difficulty in the study of statistical inference is the understanding of the concept of sampling distribution. In this work, we summarize the main difficulties described in the research on the subject and analyze its comprehension by secondary and high school students. For this purpose, the mean and range of four values provided by students of three different courses to a task related to the binomial distribution are studied. The results show a reasonable understanding of the expected value, although some students show the equiprobability bias. The understanding of sampling variability is poor, but improves with age.
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