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DEXAW
2006
IEEE

Extracting Partition Statistics from Semistructured Data

13 years 10 months ago
Extracting Partition Statistics from Semistructured Data
The effective grouping, or partitioning, of semistructured data is of fundamental importance when providing support for queries. Partitions allow items within the data set that share common structural properties to be identified efficiently. This allows queries that make use of these properties, such as branching path expressions, to be accelerated. Here, we evaluate the effectiveness of several partitioning techniques by establishing the number of partitions that each scheme can identify over a given data set. In particular, we explore the use of parameterised indexes, based upon the notion of forward and backward bisimilarity, as a means of partitioning semistructured data; demonstrating that even restricted instances of such indexes can be used to identify the majority of relevant partitions in the data.
John N. Wilson, Richard Gourlay, Robert Japp, Math
Added 10 Jun 2010
Updated 10 Jun 2010
Type Conference
Year 2006
Where DEXAW
Authors John N. Wilson, Richard Gourlay, Robert Japp, Mathias Neumüller
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