Publication | Closed Access
Approximation techniques for spatial data
38
Citations
29
References
2004
Year
Unknown Venue
Approximation TechniquesEngineeringQuery ProcessingSpatiotemporal DatabaseInformation RetrievalData ScienceData MiningManagementSpatial Data ManagementData IntegrationComputational GeometryData ManagementApproximation TheorySpatial DatabasesSelectivity EstimationSpatial Statistical AnalysisGeographyComputer ScienceHigh-quality Selectivity EstimationDistributed Query ProcessingQuery OptimizationSpatio-temporal Stream ProcessingQuantitative Spatial ModelAccurate Selectivity Estimation
Spatial Database Management Systems (SDBMS), e.g., Geographical Information Systems, that manage spatial objects such as points, lines, and hyper-rectangles, often have very high query processing costs. Accurate selectivity estimation during query optimization therefore is crucially important for finding good query plans, especially when spatial joins are involved. Selectivity estimation has been studied for relational database systems, but to date has only received little attention in SDBMS. In this paper, we introduce novel methods that permit high-quality selectivity estimation for spatial joins and range queries. Our techniques can be constructed in a single scan over the input, handle inserts and deletes to the database incrementally, and hence they can also be used for processing of streaming spatial data. In contrast to previous approaches, our techniques return approximate results that come with provable probabilistic quality guarantees. We present a detailed analysis and experimentally demonstrate the efficacy of the proposed techniques.
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