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CORR
2010
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CORR 2010
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Fast Moment Estimation in Data Streams in Optimal Space
13 years 11 months ago
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We give a space-optimal algorithm with update time O(log2 (1/) log log(1/)) for (1
Daniel M. Kane, Jelani Nelson, Ely Porat, David P.
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Added
09 Dec 2010
Updated
09 Dec 2010
Type
Journal
Year
2010
Where
CORR
Authors
Daniel M. Kane, Jelani Nelson, Ely Porat, David P. Woodruff
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Education Study Group
Computer Vision