2010 | OriginalPaper | Buchkapitel
Dependency Discovery in Data Quality
verfasst von : Daniele Barone, Fabio Stella, Carlo Batini
Erschienen in: Advanced Information Systems Engineering
Verlag: Springer Berlin Heidelberg
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A conceptual framework for the automatic discovery of dependencies between data quality dimensions is described. Dependency discovery consists in recovering the dependency structure for a set of data quality dimensions measured on attributes of a database. This task is accomplished through the data mining methodology, by learning a Bayesian Network from a database. The Bayesian Network is used to analyze dependency between data quality dimensions associated with different attributes. The proposed framework is instantiated on a real world database. The task of dependency discovery is presented in the case when the following data quality dimensions are considered; accuracy, completeness, and consistency. The Bayesian Network model shows how data quality can be improved while satisfying budget constraints.