Confirmation Sampling for Exact Nearest Neighbor Search
December 06, 2018 Β· Declared Dead Β· π Similarity Search and Applications
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Authors
Tobias Christiani, Rasmus Pagh, Mikkel Thorup
arXiv ID
1812.02603
Category
cs.DS: Data Structures & Algorithms
Citations
6
Venue
Similarity Search and Applications
Last Checked
4 months ago
Abstract
Locality-sensitive hashing (LSH), introduced by Indyk and Motwani in STOC '98, has been an extremely influential framework for nearest neighbor search in high-dimensional data sets. While theoretical work has focused on the approximate nearest neighbor problems, in practice LSH data structures with suitably chosen parameters are used to solve the exact nearest neighbor problem (with some error probability). Sublinear query time is often possible in practice even for exact nearest neighbor search, intuitively because the nearest neighbor tends to be significantly closer than other data points. However, theory offers little advice on how to choose LSH parameters outside of pre-specified worst-case settings. We introduce the technique of confirmation sampling for solving the exact nearest neighbor problem using LSH. First, we give a general reduction that transforms a sequence of data structures that each find the nearest neighbor with a small, unknown probability, into a data structure that returns the nearest neighbor with probability $1-Ξ΄$, using as few queries as possible. Second, we present a new query algorithm for the LSH Forest data structure with $L$ trees that is able to return the exact nearest neighbor of a query point within the same time bound as an LSH Forest of $Ξ©(L)$ trees with internal parameters specifically tuned to the query and data.
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