DartMinHash: Fast Sketching for Weighted Sets

Abstract

Weighted minwise hashing is a standard dimensionality reduction technique with applications to similarity search and large-scale kernel machines. We introduce a simple algorithm that takes a weighted set x ∈ R≥ 0d and computes k independent minhashes in expected time O(k k + x 0( x 1 + 1/ x 1)), improving upon the state-of-the-art BagMinHash algorithm (KDD '18) and representing the fastest weighted minhash algorithm for sparse data. Our experiments show running times that scale better with k and x 0 compared to ICWS (ICDM '10) and BagMinhash, obtaining 10x speedups in common use cases. Our approach also gives rise to a technique for computing fully independent locality-sensitive hash values for (L, K)-parameterized approximate near neighbor search under weighted Jaccard similarity in optimal expected time O(LK + x 0), improving on prior work even in the case of unweighted sets.

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