articleUC BerkeleyDec 7, 2009Closed access

Learning to Hash with Binary Reconstructive Embeddings

International Computer Science Institute · University of California, Berkeley

Abstract

Fast retrieval methods are increasingly critical for many large-scale analysis tasks, and there have been several recent methods that attempt to learn hash functions for fast and accurate nearest neighbor searches. In this paper, we develop an algorithm for learning hash functions based on explicitly minimizing the reconstruction error between the original distances and the Hamming distances of the corresponding binary embeddings. We develop a scalable coordinate-descent algorithm for our proposed hashing objective that is able to efficiently learn hash functions in a variety of settings. Unlike existing methods such as semantic hashing and spectral hashing, our method is easily kernelized and does not require…

Citation impact

811
total citations
FWCI
17.06
Percentile
100%
References
18
Citations per year

Authors

2

Topics & keywords

Keywords
  • Hash function
  • Computer science
  • Dynamic perfect hashing
  • Double hashing
  • Scalability
  • Theoretical computer science
  • Hamming distance
  • Hash table
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