Efficient rank based KNN query processing over uncertain data

ICDE(2010)

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摘要
Uncertain data are inherent in many applications such as environmental surveillance and quantitative economics research. As an important problem in many applications, KNN query has been extensively investigated in the literature. In this paper, we study the problem of processing rank based KNN query against uncertain data. Besides applying the expected rank semantic to compute KNN, we also introduce the median rank which is less sensitive to the outliers. We show both ranking methods satisfy nice top-k properties such as exact-k, containment, unique ranking, value invariance, stability and fairfulness. For given query q, IO and CPU efficient algorithms are proposed in the paper to compute KNN based on expected (median) ranks of the uncertain objects. To tackle the correlations of the uncertain objects and high IO cost caused by large number of instances of the uncertain objects, randomized algorithms are proposed to approximately compute KNN with theoretical guarantees. Comprehensive experiments are conducted on both real and synthetic data to demonstrate the efficiency of our techniques.
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关键词
uncertain data,value invariance,data acquisition,knn query processing,environmental surveillance,uncertainty handling,quantitative economics,temporal databases,query processing,algorithm design and analysis,databases,synthetic data,economic forecasting,stability,satisfiability,approximation algorithms,probabilistic logic,neural networks,semantics,probability density function,global positioning system,randomized algorithm
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