Affiliation:
1. Information Sciences Research Center, Bell Laboratories, 600 Mountain Avenue, Murray Hill, NJ
Abstract
In large data warehousing environments, it is often advantageous to provide fast, approximate answers to complex aggregate queries based on statistical summaries of the full data. In this paper, we demonstrate the difficulty of providing good approximate answers for join-queries using only statistics (in particular, samples) from the base relations. We propose
join synopses
as an effective solution for this problem and show how precomputing just
one join synopsis
for each relation suffices to significantly improve the quality of approximate answers for arbitrary queries with foreign key joins. We present optimal strategies for allocating the available space among the various join synopses when the query work load is known and identify heuristics for the common case when the work load is not known. We also present efficient algorithms for incrementally maintaining join synopses in the presence of updates to the base relations. Our extensive set of experiments on the TPC-D benchmark database show the effectiveness of join synopses and various other techniques proposed in this paper.
Publisher
Association for Computing Machinery (ACM)
Subject
Information Systems,Software
Cited by
118 articles.
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