Tight Lower Bounds for Data-Dependent Locality-Sensitive Hashing
July 15, 2015 ยท Declared Dead ยท ๐ International Symposium on Computational Geometry
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Authors
Alexandr Andoni, Ilya Razenshteyn
arXiv ID
1507.04299
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.CC,
cs.CG
Citations
52
Venue
International Symposium on Computational Geometry
Last Checked
2 months ago
Abstract
We prove a tight lower bound for the exponent $ฯ$ for data-dependent Locality-Sensitive Hashing schemes, recently used to design efficient solutions for the $c$-approximate nearest neighbor search. In particular, our lower bound matches the bound of $ฯ\le \frac{1}{2c-1}+o(1)$ for the $\ell_1$ space, obtained via the recent algorithm from [Andoni-Razenshteyn, STOC'15]. In recent years it emerged that data-dependent hashing is strictly superior to the classical Locality-Sensitive Hashing, when the hash function is data-independent. In the latter setting, the best exponent has been already known: for the $\ell_1$ space, the tight bound is $ฯ=1/c$, with the upper bound from [Indyk-Motwani, STOC'98] and the matching lower bound from [O'Donnell-Wu-Zhou, ITCS'11]. We prove that, even if the hashing is data-dependent, it must hold that $ฯ\ge \frac{1}{2c-1}-o(1)$. To prove the result, we need to formalize the exact notion of data-dependent hashing that also captures the complexity of the hash functions (in addition to their collision properties). Without restricting such complexity, we would allow for obviously infeasible solutions such as the Voronoi diagram of a dataset. To preclude such solutions, we require our hash functions to be succinct. This condition is satisfied by all the known algorithmic results.
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