2012 NIPS NeurIPS 2012

One Permutation Hashing

Abstract

While minwise hashing is promising for large-scale learning in massive binary data, the preprocessing cost is prohibitive as it requires applying (e.g.,) $k=500$ permutations on the data. The testing time is also expensive if a new data point (e.g., a new document or a new image) has not been processed. In this paper, we develop a simple \textbf{one permutation hashing} scheme to address this important issue. While it is true that the preprocessing step can be parallelized, it comes at the cost of additional hardware and implementation. Also, reducing $k$ permutations to just one would be much more \textbf{energy-efficient}, which might be an important perspective as minwise hashing is commonly deployed in the search industry. While the theoretical probability analysis is interesting, our experiments on similarity estimation and SVM \& logistic regression also confirm the theoretical results.

🌉 Interdisciplinary Bridge — Computer Science and Machine Learning
📈 Trend Setter — Information Retrieval
🧭 Keyword Pioneer — similarity estimation
🐝 Cross-Pollinator — Computer Science, Data Science & Analytics, Machine Learning, Mathematics & Optimization