2021
DOI: 10.1590/1980-4415v35n71a25
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Niveles de Razonamiento Inferencial para el Estadístico t-Student

Abstract: Resumen En este artículo presentamos una propuesta de niveles progresivos, de lo informal a lo formal, de razonamiento inferencial para el estadístico t-Student, a partir de criterios epistémicos identificados con un estudio de tipo histórico-epistemológico sobre este estadístico y de la investigación desarrollada sobre razonamiento inferencial. Para ello, utilizamos algunas nociones teórico-metodológicas introducidas por el Enfoque Onto-Semiótico del conocimiento y la instrucción matemáticos (EOS), las cuales… Show more

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Cited by 8 publications
(6 citation statements)
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References 27 publications
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“…Various metrics parameters, available in the literature, are used to evaluate and check the model’s reliability in predicting (or the ability of a model to fit) the outcome. In the present study, correlation coefficient ( R ), coefficient of determination ( R 2 ), their adjusted values ( R adj and R adj 2 , respectively), cross-validated correlation coefficient ( Q 2 ), concordance correlation coefficient ( Q 2 ccc), root-mean-squared error (RMSE), mean-squared error (MSE), mean absolute error (MAE), F -value, student t -test (t-value), and chi-square value ( x 2 ) are introduced as their formula presented below and utilized to determine the precision and performance of the suggested model R = i = 1 N ( x i obs obs ) · false( x i pred pred false) i = 1 N ( x i obs obs ) 2 · i = 1 N false( x i pred pred false) 2 R adj = true| 1 ( 1 R 2 ) ( N 1 N N normalp 1 ) true| R 2 <...…”
Section: Methodsmentioning
confidence: 99%
See 2 more Smart Citations
“…Various metrics parameters, available in the literature, are used to evaluate and check the model’s reliability in predicting (or the ability of a model to fit) the outcome. In the present study, correlation coefficient ( R ), coefficient of determination ( R 2 ), their adjusted values ( R adj and R adj 2 , respectively), cross-validated correlation coefficient ( Q 2 ), concordance correlation coefficient ( Q 2 ccc), root-mean-squared error (RMSE), mean-squared error (MSE), mean absolute error (MAE), F -value, student t -test (t-value), and chi-square value ( x 2 ) are introduced as their formula presented below and utilized to determine the precision and performance of the suggested model R = i = 1 N ( x i obs obs ) · false( x i pred pred false) i = 1 N ( x i obs obs ) 2 · i = 1 N false( x i pred pred false) 2 R adj = true| 1 ( 1 R 2 ) ( N 1 N N normalp 1 ) true| R 2 <...…”
Section: Methodsmentioning
confidence: 99%
“…A model is determined as the best model that represented the experimental result if that model shows the smallest value of AIC (or AICs, BIC) , AIC = N 0.25em ln ( SSE N ) AICs = AICs + 2 n p + 2 n p ( n normalp + 1 ) N ( n normalp + 1 ) SSE = prefix∑ i = 0 N false( x i obs x i pred false) 2 BIC = N · ln ( MSE ) + n p · ln ( N ) where N is the number of data points in the data set, x i obs is the observed value, while x̅ obs is its average, x i pred is the predicted value, while x̅ pred is its average, N p is the number of independent variables in each model, MS R is the mean square regression, MS E is the mean square residual, s is the pooled standard deviation, and SSE is the error sum of squares. More details can be found elsewhere. , , Typically, a single statistic value is meaningless; the principal model studied in this paper was compared with 11 different topologies.…”
Section: Methodsmentioning
confidence: 99%
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“…Furthermore, proposals for levels of inferential reasoning on hypothesis testing have emerged, where it is proposed to solve statistical inference problems initially with aspects of informal inference and progressively move towards formal notions and methods of statistical inference (Lugo-Armenta & Pino-Fan, 2021b). The acquisition of statistical concepts must be gradual for its correct application in problem solving.…”
Section: Contribution To the Literaturementioning
confidence: 99%
“…Recently developed studies sought to promote the logic of hypothesis testing in order to promote inferential reasoning (Harradine et al, 2011;Liu & Thompson, 2009;Lugo-Armenta & Pino-Fan, 2021b). The following item was applied only in the teachers' questionnaire and deals with students' difficulties in the study of the hypothesis tests.…”
Section: / 18mentioning
confidence: 99%