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Efficient probabilistic reverse nearest neighbor query processing on uncertain data
Author(s) -
Thomas Bernecker,
Tobias Emrich,
HansPeter Kriegel,
Matthias Renz,
Stefan Zankl,
Andreas Züfle
Publication year - 2011
Publication title -
proceedings of the vldb endowment
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.946
H-Index - 134
ISSN - 2150-8097
DOI - 10.14778/2021017.2021024
Subject(s) - k nearest neighbors algorithm , computer science , pruning , nearest neighbor search , probabilistic logic , best bin first , data mining , object (grammar) , fixed radius near neighbors , query optimization , nearest neighbor chain algorithm , pattern recognition (psychology) , artificial intelligence , cluster analysis , canopy clustering algorithm , correlation clustering , agronomy , biology
Given a query object q, a reverse nearest neighbor (RNN) query in a common certain database returns the objects having q as their nearest neighbor. A new challenge for databases is dealing with uncertain objects. In this paper we consider probabilistic reverse nearest neighbor (PRNN) queries, which return the uncertain objects having the query object as nearest neighbor with a sufficiently high probability. We propose an algorithm for efficiently answering PRNN queries using new pruning mechanisms taking distance dependencies into account. We compare our algorithm to state-of-the-art approaches recently proposed. Our experimental evaluation shows that our approach is able to significantly outperform previous approaches. In addition, we show how our approach can easily be extended to PRkNN (where k > 1) query processing for which there is currently no efficient solution.

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