Database Structure Analyzer for Agribusiness with Data Quality Dimensions
Abstract
This paper presents a tool for the data quality analysis of databases. The expected result is an interface to assist in the verification and analysis of data. The solution was developed by combining data dictionaries and stored data capabilities, enabling the investigation and analysis of relevant aspects based on data quality criteria. The objective is to provide qualitative results regarding the data structure, presenting faulty points such as integrity, objectivity, validity, and others.
References
Knauer, T., Nikiforow, N., and Wagener, S. (2020). Determinants of information system quality and data quality in management accounting. Journal of Management Control, 31.
Malaverri, J. and Medeiros, C. (2012). Data quality in agriculture applications. Proceedings of the Brazilian Symposium on GeoInformatics, pages 128–139.
Nasr, M., Shaaban, E., and Gabr, M. I. (2020). Data quality dimensions. In Internet of Things - Applications and Future, pages 201–218. Springer.
Sidi, F., Shariat Panahy, P. H., Affendey, L. S., Jabar, M. A., Ibrahim, H., and Mustapha, A. (2012). Data quality: A survey of data quality dimensions. In 2012 International Conference on Information Retrieval Knowledge Management, pages 300–304.
Sureddy, M. R. and Yallamula, P. (2020). Data quality architecture for data warehouses. International Journal of Research Cultural Society, 4(6):95–100.
