MODELADO DE LA PROCEDENCIA DEL PANEL
DOI:
https://doi.org/10.56238/revgeov17n4-075Palabras clave:
Modelo de Procedencia, Dashboard, Visualización, Experiencia del UsuarioResumen
Las organizaciones de todo tipo, ya sean públicas o privadas, con fines de lucro o sin fines de lucro, y de diversos sectores e industrias, dependen de los paneles de control (dashboards) para una visualización eficaz de datos. Sin embargo, la confiabilidad y la eficacia de estos paneles dependen de la calidad de los elementos visuales y de los datos que presentan. Los estudios muestran que menos de una cuarta parte de los dashboards proporciona información sobre sus fuentes, lo cual representa solo uno de los metadatos esperados cuando la procedencia se considera de manera adecuada. La procedencia es un registro que describe a las personas, organizaciones, entidades y actividades que tuvieron un papel en la producción, influencia o entrega de un dato u objeto. Este artículo tiene como objetivo proporcionar un modelo de representación de procedencia que permita la estandarización, modelado, generación, captura y visualización, específicamente diseñado para dashboards y sus componentes visuales y de datos. El modelo propuesto proporcionará un conjunto integral de metadatos de procedencia, permitiendo a los usuarios evaluar la calidad, consistencia y confiabilidad de la información presentada en los dashboards. Esto proporcionará una comprensión clara y precisa del contexto en el que se desarrolló un determinado panel, lo que en última instancia conducirá a una mejor toma de decisiones.
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