CRITERIA AND ASSESSMENTS OF DATA QUALITY IN A GEOGRAPHIC INFORMATION DATABASE OF CULTURAL HERITAGE OBJECTS
Keywords:
cultural heritage objects, geographic information systems, GIS, data quality, spatial accuracy, attribute accuracy, completeness, logical consistency, temporal accuracy, metadata, standardization, geodatabase, digital cadastre, monitoring system.Abstract
This paper presents a scientific analysis of the criteria for assessing data quality within a geographic information database of cultural heritage objects. The study examines key quality indicators—such as spatial and attribute accuracy, completeness, logical consistency, and currency—pertaining to cultural heritage databases developed using Geographic Information Systems (GIS). The paper also highlights the significance of standardization, metadata reliability, and inter-system integration capabilities in the context of data quality assessment. As a result of this work, scientific and methodological approaches are proposed to facilitate the effective management of cultural heritage objects within a digital environment, as well as to optimize the processes for their monitoring and preservation. The research aims to enhance the efficiency of GIS technology application in the field of cultural heritage conservation and management.
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