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Cryptography / Theoretical computer science / Pseudorandomness / Randomness / Applied mathematics / Information theory / Computational complexity theory / Random number generation / Extractor / Entropy / Disperser / Pseudorandom generator
Date: 2007-05-07 14:18:08
Cryptography
Theoretical computer science
Pseudorandomness
Randomness
Applied mathematics
Information theory
Computational complexity theory
Random number generation
Extractor
Entropy
Disperser
Pseudorandom generator

Lossless Condensers, Unbalanced Expanders, and Extractors Amnon Ta-Shma∗ Christopher Umans† David Zuckerman‡

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