arXiv Open Access 2016

Optimal Hashing-based Time-Space Trade-offs for Approximate Near Neighbors

Alexandr Andoni Thijs Laarhoven Ilya Razenshteyn Erik Waingarten
Lihat Sumber

Abstrak

[See the paper for the full abstract.] We show tight upper and lower bounds for time-space trade-offs for the $c$-Approximate Near Neighbor Search problem. For the $d$-dimensional Euclidean space and $n$-point datasets, we develop a data structure with space $n^{1 + ρ_u + o(1)} + O(dn)$ and query time $n^{ρ_q + o(1)} + d n^{o(1)}$ for every $ρ_u, ρ_q \geq 0$ such that: \begin{equation} c^2 \sqrt{ρ_q} + (c^2 - 1) \sqrt{ρ_u} = \sqrt{2c^2 - 1}. \end{equation} This is the first data structure that achieves sublinear query time and near-linear space for every approximation factor $c > 1$, improving upon [Kapralov, PODS 2015]. The data structure is a culmination of a long line of work on the problem for all space regimes; it builds on Spherical Locality-Sensitive Filtering [Becker, Ducas, Gama, Laarhoven, SODA 2016] and data-dependent hashing [Andoni, Indyk, Nguyen, Razenshteyn, SODA 2014] [Andoni, Razenshteyn, STOC 2015]. Our matching lower bounds are of two types: conditional and unconditional. First, we prove tightness of the whole above trade-off in a restricted model of computation, which captures all known hashing-based approaches. We then show unconditional cell-probe lower bounds for one and two probes that match the above trade-off for $ρ_q = 0$, improving upon the best known lower bounds from [Panigrahy, Talwar, Wieder, FOCS 2010]. In particular, this is the first space lower bound (for any static data structure) for two probes which is not polynomially smaller than the one-probe bound. To show the result for two probes, we establish and exploit a connection to locally-decodable codes.

Penulis (4)

A

Alexandr Andoni

T

Thijs Laarhoven

I

Ilya Razenshteyn

E

Erik Waingarten

Format Sitasi

Andoni, A., Laarhoven, T., Razenshteyn, I., Waingarten, E. (2016). Optimal Hashing-based Time-Space Trade-offs for Approximate Near Neighbors. https://arxiv.org/abs/1608.03580

Akses Cepat

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Tahun Terbit
2016
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en
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arXiv
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Open Access ✓