Authors
Eike Schallehn, Kai-Uwe Sattler, Gunter Saake
Publication date
2004/3/1
Journal
Data & Knowledge Engineering
Volume
48
Issue
3
Pages
361-387
Publisher
North-Holland
Description
Dealing with discrepancies in data is still a big challenge in data integration systems. The problem occurs both during eliminating duplicates from semantic overlapping sources as well as during combining complementary data from different sources. Though using SQL operations like grouping and join seems to be a viable way, they fail if the attribute values of the potential duplicates or related tuples are not equal but only similar by certain criteria. As a solution to this problem, we present in this paper similarity-based variants of grouping and join operators. The extended grouping operator produces groups of similar tuples, the extended join combines tuples satisfying a given similarity condition. We describe the semantics of this operator, discuss efficient implementations for the edit distance similarity and present evaluation results. Finally, we give examples of application from the context of a data reconciliation …
Total citations
20042005200620072008200920102011201220132014201520162017201820192020202120222023202425544882227473216321
Scholar articles
E Schallehn, KU Sattler, G Saake - Data & Knowledge Engineering, 2004