Calidad Funcional: un nuevo enfoque sobre la calidad de datos
DOI:
https://doi.org/10.59192/mapping.420Palabras clave:
Calidad de datos, Adecuación al uso, ISO 19157, Evaluación de la calidad, Calidad funcionalResumen
En este trabajo se reflexiona sobre la calidad de datos geoespaciales y sobre como el paradigma actual, datocentrico, puede ser superado mediante la consideración de casos de uso genéricos que vinculen los datos geoespaciales con su procesado (algoritmos). De esta forma, se propone una nueva aproximación a la calidad de los datos geoespaciales que supone una situación intermedia entre el extremo datocéntrico, adoptado hasta la fecha por los productores como única perspectiva viable, y el extremo usocéntrico propio de los usuarios, y que probablemente resulta inabordable. Como apreciación de la calidad en medio de esos dos extremos se propone la calidad funcional. En este articulo se define ese concepto y se ofrecen algunas directrices para abordarlo.
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