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Efficient Search for Approximate Nearest Neighbor in High Dimensional Spaces

Published: 04 April 2000 Publication History

Abstract

We address the problem of designing data structures that allow efficient search for approximate nearest neighbors. More specifically, given a database consisting of a set of vectors in some high dimensional Euclidean space, we want to construct a space-efficient data structure that would allow us to search, given a query vector, for the closest or nearly closest vector in the database. We also address this problem when distances are measured by the L1 norm and in the Hamming cube. Significantly improving and extending recent results of Kleinberg, we construct data structures whose size is polynomial in the size of the database and search algorithms that run in time nearly linear or nearly quadratic in the dimension. (Depending on the case, the extra factors are polylogarithmic in the size of the database.)

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cover image SIAM Journal on Computing
SIAM Journal on Computing  Volume 30, Issue 2
2000
341 pages

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Society for Industrial and Applied Mathematics

United States

Publication History

Published: 04 April 2000

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  1. data structures
  2. nearest neighbor search
  3. random projections

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