Uso del modelo de Bernoulli para analizar la distribución de bajas parciales por curso en la UPR-Bayamón
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Palabras clave

bajas parciales por curso
modelo de Bernoulli
asimetrías
curtosis
función generatriz de momentos

Cómo citar

Matos- Díaz, H. (2024). Uso del modelo de Bernoulli para analizar la distribución de bajas parciales por curso en la UPR-Bayamón. Fórum Empresarial, 29(1), 45–82. https://doi.org/10.33801/fe.v29i1.21793

Resumen

Usando un archivo longitudinal de los 39,337 cursos ofrecidos en la UPR-Bayamón durante 41 semestres consecutivos, se analiza la distribución de bajas parciales por curso a través de los primeros cuatro momentos: media, varianza, asimetría, y curtosis. Las características de los cursos, de los estudiantes, y muy particularmente, la heterogeneidad inobservable de los profesores, ejercen una fuerte y significativa influencia sobre el comportamiento de los momentos a través del tiempo. Parecería, que profesores y estudiantes están involucrados en un proceso de ir de compras que les beneficia mutuamente a expensas de los estándares académicos y de la calidad de la educación provista.

https://doi.org/10.33801/fe.v29i1.21793
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Citas

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