Authors
Dell Zhang, Jun Wang, Deng Cai, Jinsong Lu
Publication date
2010/7/19
Conference
Proceedings of the 33rd international ACM SIGIR conference on Research and development in information retrieval
Pages
18-25
Publisher
ACM
Description
The ability of fast similarity search at large scale is of great importance to many Information Retrieval (IR) applications. A promising way to accelerate similarity search is semantic hashing which designs compact binary codes for a large number of documents so that semantically similar documents are mapped to similar codes (within a short Hamming distance). Although some recently proposed techniques are able to generate high-quality codes for documents known in advance, obtaining the codes for previously unseen documents remains to be a very challenging problem. In this paper, we emphasise this issue and propose a novel Self-Taught Hashing (STH) approach to semantic hashing: we first find the optimal l-bit binary codes for all documents in the given corpus via unsupervised learning, and then train l classifiers via supervised learning to predict the l-bit code for any query document unseen before. Our …
Total citations
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Scholar articles
D Zhang, J Wang, D Cai, J Lu - Proceedings of the 33rd international ACM SIGIR …, 2010