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Anytime measures for top-k algorithms on exact and fuzzy data sets
Authors:Benjamin Arai  Gautam Das  Dimitrios Gunopulos  Nick Koudas
Affiliation:(1) University of California, Riverside, USA;(2) University of Texas, Arlington, USA;(3) University of Athens, Athens, Greece;(4) University of Toronto, Toronto, Canada
Abstract:Top-k queries on large multi-attribute data sets are fundamental operations in information retrieval and ranking applications. In this article, we initiate research on the anytime behavior of top-k algorithms on exact and fuzzy data. In particular, given specific top-k algorithms (TA and TA-Sorted) we are interested in studying their progress toward identification of the correct result at any point during the algorithms’ execution. We adopt a probabilistic approach where we seek to report at any point of operation of the algorithm the confidence that the top-k result has been identified. Such a functionality can be a valuable asset when one is interested in reducing the runtime cost of top-k computations. We present a thorough experimental evaluation to validate our techniques using both synthetic and real data sets.
Keywords:Approximate query  Anytime  Top-k            Fuzzy data
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