Fast Locality Sensitive Hashing with Theoretical Guarantee

Zongyuan Tan,Hongya Wang,Bo Xu, Minjie Luo,Ming Du

CoRR(2023)

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摘要
Locality-sensitive hashing (LSH) is an effective randomized technique widely used in many machine learning tasks. The cost of hashing is proportional to data dimensions, and thus often the performance bottleneck when dimensionality is high and the number of hash functions involved is large. Surprisingly, however, little work has been done to improve the efficiency of LSH computation. In this paper, we design a simple yet efficient LSH scheme, named FastLSH, under l2 norm. By combining random sampling and random projection, FastLSH reduces the time complexity from O(n) to O(m) (m更多
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关键词
fast locality sensitive hashing,theoretical guarantee
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