Beyond Locality-Sensitive Hashing

Abstract

We present a new data structure for the c-approximate near neighbor problem (ANN) in the Euclidean space. For n points in Rd, our algorithm achieves O(n + d log n) query time and O(n1 + + d log n) space, where <= 7/(8c2) + O(1 / c3) + o(1). This is the first improvement over the result by Andoni and Indyk (FOCS 2006) and the first data structure that bypasses a locality-sensitive hashing lower bound proved by O'Donnell, Wu and Zhou (ICS 2011). By a standard reduction we obtain a data structure for the Hamming space and 1 norm with <= 7/(8c) + O(1/c3/2) + o(1), which is the first improvement over the result of Indyk and Motwani (STOC 1998).

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