articleJun 28, 2011Closed access
Minimal Loss Hashing for Compact Binary Codes
Abstract
We propose a method for learning similaritypreserving hash functions that map highdimensional data onto binary codes. The formulation is based on structured prediction with latent variables and a hinge-like loss function. It is efficient to train for large datasets, scales well to large code lengths, and outperforms state-of-the-art methods. 1.
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2Topics & keywords
Topics
Keywords
- Hash function
- Binary code
- Computer science
- Binary number
- Code (set theory)
- Algorithm
- Hash table
- Theoretical computer science
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