Grafos interactivos de regresión con modelos lineales generales

Autores/as

  • Modesto Escobar Universidad de Salamanca
  • Cristina Calvo López Universidad de Salamanca

Resumen

Este trabajo introduce una metodología innovadora en el análisis de datos dentro de la investigación social, destacando la aplicación de grafos y análisis de regresión en la representación gráfica de resultados estadísticos. La propuesta central se enfoca en el uso de gráficos reticulares para una interpretación más clara y accesible de las relaciones entre variables, tanto cuantitativas como cualitativas. Este enfoque se complementa con un análisis crítico sobre métodos tradicionales, especialmente en lo que respecta a la categoría base-contraste y la relevancia de márgenes y efectos marginales en los modelos estadísticos. Se presenta una metodología que no solo aborda la clarificación conceptual en el ámbito de la regresión estadística, sino que también propone formas visuales innovadoras para representar y analizar datos complejos.

Palabras clave

grafos interactivos, análisis de coincidencias, análisis de regresión

Citas

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Publicado

2024-10-01

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