Tighter lower bounds for nearest neighbor search and related problems in the cell probe model

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Abstract

We prove new lower bounds for nearest neighbor search in the Hamming cube. Our lower bounds are for randomized, two-sided error, algorithms in Yao's cell probe model. Our bounds are in the form of a tradeoff among the number of cells, the size of a cell, and the search time. For example, suppose we are searching among n points in the d dimensional cube, we use poly(n, d) cells, each containing poly(d, log u) bits. We get a lower bound of Ω(d/log n) on the search time, a significant improvement over the recent bound of Ω(log d) of Borodin et al. This should be contrasted with the upper bound of O(log log d) for approximate search (and O(1) for a decision version of the problem; our lower bounds hold in that case). By previous results, the bounds for the cube imply similar bounds for nearest neighbor search in high dimensional Euclidean space, and for other geometric problems. © 2002 Elsevier Science (USA).

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APA

Barkol, O., & Rabani, Y. (2002). Tighter lower bounds for nearest neighbor search and related problems in the cell probe model. In Journal of Computer and System Sciences (Vol. 64, pp. 873–896). Academic Press Inc. https://doi.org/10.1006/jcss.2002.1831

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