Approxiamate Nearest Neighbor Search in High Dimensions
Author(s)
Andoni, Alexandr; Indyk, Piotr; Razenshteyn, Ilya
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The nearest neighbor problem is defined as follows: Given a set P of n points in some metric space (X; D), build a data structure that, given any point q, returns a point in P that is closest to q (its “nearest neighbor” in P). The data structure stores additional information about the set P, which is then used to find the nearest neighbor without computing all distances between q and P . The problem has a wide range of applications in machine learning, computer vision, databases and other fields. To reduce the time needed to find nearest neighbors and the amount of memory used by the data structure, one can formulate the approximate nearest neighbor problem, where the the goal is to return any point p′ ∊ P such that the distance from q to p′ is at most c minp∊P D(q; p), for some c ≥ 1. Over the last two decades many efficient solutions to this problem were developed. In this article we survey these developments, as well as their connections to questions in geometric functional analysis and combinatorial geometry.
Date issued
2018-08Department
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer ScienceJournal
Proceedings of the International Congress of Mathematicians
Publisher
International Mathematical Union
Citation
Andoni, Alexandr et al. “Approximate Nearest Neighbor Search in High Dimensions.” Proceedings of the International Congress of Mathematicians, Volume 4, August 2018, Rio de Janeiro, Brazil, International Mathematical Union, 2018. © 2018 Sociedade Brasileira de Matemática and International Mathematical
Union.
Version: Original manuscript
ISSN
1041-4347