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Fixed-Rate Universal Lossy Source Coding and Rates of Convergence for Memoryless Sources
IEEE Transactions on Information Theory
- United States
doi 10.1109/18.382013
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Categories
Computer Science Applications
Information Systems
Library
Information Sciences
Date
May 1, 1995
Authors
T. Linder
G. Lugosi
K. Zeger
Publisher
Institute of Electrical and Electronics Engineers (IEEE)
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