Ranked join indices

A plethora of data sources contain data entities that could be ordered according to a variety of attributes associated with the entities. Such orderings result effectively in a ranking of the entities according to the values in the attribute domain. Commonly, users correlate such sources for query p...

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Bibliographic Details
Published in2003 19th International Conference on Data Engineering pp. 277 - 288
Main Authors Tsaparas, P., Palpanas, T., Kotidis, Y., Koudas, N., Divesh Srivastava
Format Conference Proceeding
LanguageEnglish
Published IEEE 2003
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ISBN9780780376656
078037665X
DOI10.1109/ICDE.2003.1260799

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Summary:A plethora of data sources contain data entities that could be ordered according to a variety of attributes associated with the entities. Such orderings result effectively in a ranking of the entities according to the values in the attribute domain. Commonly, users correlate such sources for query processing purposes through join operations. In query processing, it is desirable to incorporate user preferences towards specific attributes or their values. A way to incorporate such preferences is by utilizing scoring functions that combine user preferences and attribute values and return a numerical score for each tuple in the join result. Then, a target query, which we refer to as top-k join query, seeks to identify the k tuples in the join result with the highest scores. We propose a novel technique, which we refer to as ranked join index, to efficiently answer top-k join queries for arbitrary, user specified, preferences and a large class of scoring functions. Our rank join index requires small space (compared to the entire join result) and provides guarantees for its performance. Moreover, our proposal provides a graceful tradeoff between its space requirements and worst case search performance. We supplement our analytical results with a thorough experimental evaluation using a variety of real and synthetic data sets, demonstrating that, in comparison to other viable approaches, our technique offers significant performance benefits.
ISBN:9780780376656
078037665X
DOI:10.1109/ICDE.2003.1260799