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Data Quality Mining: Employing Classifiers for Assuring Consistent Datasets

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Information Technologies in Environmental Engineering

Part of the book series: Environmental Science and Engineering ((ENVENG))

Abstract

Independent from the concrete definition of the term “data quality” consistency always plays a major role. There are two main points when dealing with the data quality of a database: Firstly, the data quality has to be measured, and secondly, if is necessary, it must be improved. A classifier can be used for both purposes regarding consistency demands by calculating the distance of the classified value to the stored value for measuring and using the classified value for correction.

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© 2007 Springer-Verlag Berlin Heidelberg

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Grüning, F. (2007). Data Quality Mining: Employing Classifiers for Assuring Consistent Datasets. In: Gómez, J.M., Sonnenschein, M., Müller, M., Welsch, H., Rautenstrauch, C. (eds) Information Technologies in Environmental Engineering. Environmental Science and Engineering. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-540-71335-7_11

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