An inconsistency measure of spatial data sets with respect to topological constraints |
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Authors: | Nieves R. Brisaboa Miguel R. Luaces M. Andrea Rodríguez |
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Affiliation: | 1. Database Laboratory, University of A Coru?a, Spain;2. Department of Computer Science, University of Concepción, Chile |
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Abstract: | An inconsistency measure can be used to compare the quality of different data sets and to quantify the cost of data cleaning. In traditional relational databases, inconsistency is defined in terms of constraints that use comparison operators between attributes. Inconsistency measures for traditional databases cannot be applied to spatial data sets because spatial objects are complex and the constraints are typically defined using spatial relations. This paper proposes an inconsistency measure to evaluate how dirty a spatial data set is with respect to a set of integrity constraints that define the topological relations that should hold between objects in the data set. The paper starts by reviewing different approaches to quantify the degree of inconsistency and showing that they are not suitable for the problem. Then, the inconsistency measure of a data set is defined in terms of the degree in which each spatial object in the data set violates topological constraints, and the possible representations of spatial objects are points, curves, and surfaces. Finally, an experimental evaluation demonstrates the applicability of the proposed inconsistency measure and compares it with previously existing approaches. |
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Keywords: | inconsistency measure topological similarity measure spatial inconsistency |
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