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Searching in Metric Spaces by Spatial Approximation
Cancun, Mexico September 21-September 24
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/SPIRE.1999.796589String Processing and Information Ret ...
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Gonzalo Navarro, University of Chile
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 defined among them, which satisfies 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 difficult cases in real applications.
Index Terms:
Voronoi graphs, proximity search, high dimensional spaces
Citation:
Gonzalo Navarro, "Searching in Metric Spaces by Spatial Approximation," spire, pp.141, String Processing and Information Retrieval Symposium & International Workshop on Groupware, 1999
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