Artikel in Tagungsband INPROC-2004-42

Bibliograph.
Daten
Schwarz, Thomas; Iofcea, Markus; Grossmann, Matthias; Hönle, Nicola; Nicklas, Daniela; Mitschang, Bernhard: On Efficiently Processing Nearest Neighbor Queries in a Loosely Coupled Set of Data Sources.
In: ACM (Hrsg): Proceedings of the 12th ACM International Symposium on Advances in Geographic Information System (ACM GIS 004), Washington D.C., November 12-13, 2004.
Universität Stuttgart : Sonderforschungsbereich SFB 627 (Nexus: Umgebungsmodelle für mobile kontextbezogene Systeme).
englisch.
?, 12. November 2004.
Artikel in Tagungsband (Konferenz-Beitrag).
CR-Klassif.H.2.4 (Database Management Systems)
H.2.8 (Database Applications)
H.3.3 (Information Search and Retrieval)
KeywordsData integration, distributed query processing, federated database system, kNN, nearest neighbors, parallel query processing
Kurzfassung

We propose a family of algorithms for processing nearest neighbor (NN) queries in an integration middleware that provides federated access to numerous loosely coupled, autonomous data sources connected through the internet. Previous approaches for parallel and distributed NN queries considered all data sources as relevant, or determined the relevant ones in a single step by exploiting additional knowledge on object counts per data source. We propose a different approach that does not require such detailed statistics about the distribution of the data. It iteratively enlarges and shrinks the set of relevant data sources. Our experiments show that this yields considerable performance benefits with regard to both response time and effort. Additionally, we propose to use only moderate parallelism instead of querying all relevant data sources at the same time. This allows us to trade a slightly increased response time for a lot less effort, hence maximizing the cost profit ratio, as we show in our experiments. Thus, the proposed algorithms clearly extend the set of NN algorithms known so far.

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Kontaktthomas.schwarz@informatik.uni-stuttgart.de
Abteilung(en)Universität Stuttgart, Institut für Parallele und Verteilte Systeme, Anwendersoftware
Projekt(e)SFB-627, B1 (Universität Stuttgart, Institut für Parallele und Verteilte Systeme, Anwendersoftware)
Eingabedatum9. November 2004
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