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Statistics / Data mining / Machine learning / Linear algebra / Nearest neighbor search / Space / Cluster analysis / Metric tree / Hash function / Mathematics / Information science / Search algorithms
Date: 2008-12-08 05:11:33
Statistics
Data mining
Machine learning
Linear algebra
Nearest neighbor search
Space
Cluster analysis
Metric tree
Hash function
Mathematics
Information science
Search algorithms

A Hashed Schema for Similarity Search in Metric Spaces Claudio Gennaro Pasquale Savino

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