References
Abdolkhani, R., Borda, A., & Gray, K. (2018). Quality Management of Patient Generated Health Data in Remote Patient Monitoring Using Medical Wearables–A Systematic Review. Connecting the System to Enhance the Practitioner and Consumer Experience in Healthcare, 1-7; https://doi.org/10.3233/978-1-61499-890-7-1.
Bastie, P., & Sandoz, F. (2022). Understanding Best Source Selector Performances and Results from Two Test Scenarios. International Foundation for Telemetering, ISSN: 1546-2188, 0884-5123, 0074-9079.
Bonyadi, S., Hariri, N., Taheri, S. M., & Poornaghi, R. (2023). Provide data quality management model for data governance using meta synthesis. Iranian Journal of Information Processing and Management, 38 (4), 1533-1564, https://doi.org/10.22034/jipm.2023.698597.
Caballero, I., Gualo, F., Rodríguez, M., & Piattini, M. (2022). BR4DQ: a methodology for grouping business rules for data quality evaluation. Information Systems, 109, 102058, https://doi.org/10.1016/j.is.2022.102058.
Ehrlinger, L., Lettner, C., Fragner, W., Gsellmann, G., Nestelberger, S., Rauchenzauner, F., ... & Zeindl, J. (2022, August). Data Integration, Management, and Quality: From Basic Research to Industrial Application. In International Conference on Database and Expert Systems Applications (pp. 167-178). Cham: Springer International Publishing, https://doi.org/10.1007/978-3-031-14343-4_16.
Fakhrzdaeh, A., Ershadi, M. J., & Ershadi, M. M. (2023). Data mining methods for quality control of research data; Case study of Iranian Scientific Database (GANJ). Iranian Journal of Information Processing and Management, 38 (3), 927-944, https://doi.org/10.22034/jipm.2023.698614.
Hamlin, B. (2022). A Consensus-based Data Quality Assessment Model for Patient Reported Outcome Information in Digital Quality Measurement Programs (Doctoral dissertation, Johns Hopkins University), http://jhir.library.jhu.edu/handle/1774.2/67111.
Hutama, A. T., Hidayanto, A. N., & Suryono, R. R. (2023). Business intelligence maturity assessment: a case study on an indonesian automotive company. Jurnal Teknoinfo, 17 (2), 379-389, https://doi.org/10.33365/jti.v17i2.2443.
Khaleghian, H., & Shan, Y. (2023). Developing a Data Quality Evaluation Framework for Sewer Inspection Data. Water, 15 (11), 2043, https://doi.org/10.3390/w15112043.
Kim, S., Pérez-Castillo, R., Caballero, I., & Lee, D. (2022). Organizational process maturity model for IoT data quality management. Journal of Industrial Information Integration, 26, 100256, https://doi.org/10.1016/j.jii.2021.100256.
Mabotja, P. P. (2022). Improving data quality and management in one South African SME for data analytics (Doctoral dissertation, North-West University (South Africa)), http://hdl.handle.net/10394/39226.
Mäkitalo, K. (2023). Using custom data quality maturity tool for improving data quality in an organization, https://urn.fi/URN:NBN:fi:amk-2023120133508.
Ngueilbaye, A., Huang, J. Z., Khan, M., & Wang, H. (2023). Data quality model for assessing public COVID-19 big datasets. The Journal of Supercomputing, 79 (17), 19574-19606, https://doi.org/10.1007/s11227-023-05410-0.
Pratiktio, R. P., Kusumasari, T. F., & Fauzi, R. (2023, February). Design guidelines and process of reference data quality management based on data management body of knowledge. In AIP Conference Proceedings (Vol. 2654, No. 1). AIP Publishing, https://doi.org/10.1063/5.0114293.
Sanchez, G., & Reitmeier, J. (2022, April). Multivariate Data Quality Relationships of Geothermal Facilities for Increased Efficiency in Digital Operations. In Offshore Technology Conference (p. D041S056R007). OTC, ISBN: 978-1-61399-852-6.
Serra, F., Peralta, V., Marotta, A., & Marcel, P. (2022). Use of context in data quality management: a systematic literature review. ACM Journal of Data and Information Quality, https://doi.org/10.1145/3672082.
Serra, F., Peralta, V., Marotta, A., & Marcel, P. (2022, October). Modeling context for data quality management. In International Conference on Conceptual Modeling (pp. 325-335). Cham: Springer International Publishing, https://doi.org/10.1007/978-3-031-17995-2_23.
Shankaranarayanan, G., & Zhu, B. (2021). Enhancing decision-making with data quality metadata. Journal of Systems and Information Technology, 23 (2), 199-217, https://doi.org/10.1108/JSIT-08-2020-0153.
Siregar, D. Y., Akbar, H., Pranidhana, I. B. P. A., Hidayanto, A. N., & Ruldeviyani, Y. (2022, January). The importance of data quality to reinforce COVID-19 vaccination scheduling system: A study case of Jakarta, Indonesia. In 2022 2nd International Conference on Information Technology and Education (ICIT&E) (pp. 262-268). IEEE, https://doi.org/10.1109/ICITE54466.2022.9759880.
Souza, J., Caballero, I., Lopes, F., Vasco Santos, J., Gualo, F., Merino, J., & Freitas, A. Auditdq: a Framework Based on International Standards to Enhance the Evaluation of the Quality of Hospital Administrative Data. Available at SSRN 4598486,
Sturm, M. L. (2023). Simulation Data Quality--Automatic checks on monitoring histograms (No. CERN-STUDENTS-Note-2023-180), CERN-STUDENTS-Note-2023-180.
Valencia Parra, Á. (2022). On the enhancement of big data pipelines through data preparation, data quality, and the distribution of optimization problems, https://hdl.handle.net/11441/141972.
Wolff, S. (2023). Design and implementation of a workflow for quality improvement of the metadata of scientific publications, https://doi.org/10.25366/2023.211.
Yaman, B., Thompson, K., Fahey, F., & Brennan, R. (2024). LinkedDataOps: quality oriented end-to-end geospatial linked data production governance. Semantic Web, (Preprint), 1-27, https://doi.org/10.3233/SW-233293.
Zhang, S., Benis, N., & Cornet, R. (2023). Automated approach for quality assessment of RDF resources. BMC Medical Informatics and Decision Making, 23 (Suppl 1), 90, https://doi.org/10.1186/s12911-023-02182-8.
Zhou, H., Han, L., Dermatini, G., Indulska, M., & Sadiq, S. (2022, October). A Behavioral Analysis of Metadata Use in Evaluating the Quality of Repurposed Data. In International Conference on Conceptual Modeling (pp. 310-324). Cham: Springer International Publishing, https://doi.org/10.1007/978-3-031-17995-2_22.