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SIGMOD   2002 International Conference on Management of Data
Wall of Fame | Most Viewed SIGMOD-2002 Paper
SIGMOD
2002
ACM
246views Database» more  SIGMOD 2002»
15 years 17 days ago
Hierarchical subspace sampling: a unified framework for high dimensional data reduction, selectivity estimation and nearest neig
With the increased abilities for automated data collection made possible by modern technology, the typical sizes of data collections have continued to grow in recent years. In suc...
Charu C. Aggarwal
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