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VLDB
2002
ACM

Searching in metric spaces by spatial approximation

14 years 11 months ago
Searching in metric spaces by spatial approximation
We propose a new data structure to search in metric spaces. A metric space is formed by a collection of objects and a distance function de ned among them, which satis es the triangular inequality. The goal is, given a set of objects and a query, retrieve those objects close enough to the query. The number of distances computed to achieve this goal is the complexity measure. Our data structure, called sa-tree (\spatial approximation tree"), is based on approaching spatially the searched objects. We analyze our method and show that the number of distance evaluations to search among n objects is o(n). We show experimentally that the sa-tree is the best existing technique when the metric space is high-dimensional or the query has low selectivity. These are the most di cult cases in real applications.
Gonzalo Navarro
Added 05 Dec 2009
Updated 05 Dec 2009
Type Conference
Year 2002
Where VLDB
Authors Gonzalo Navarro
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