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How to increase the information capacity of a communication channel? 

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Our work improves the comprehension about the age of channel state information and its effect on the performance of communication links, which is fundamental for designing efficient adaptation functions and feedback protocols.
It is shown that channel capacity is significantly enhanced.
This sharply increases channel capacity.
Journal ArticleDOI
Sergio Verdu, Shlomo Shamai 
82 Citations
We show that (single-user) variable-to-fixed channel capacity is intimately connected to the capacity region of broadcast channels with degraded message sets, and we give an expression for the fixed-to-variable capacity.
Proceedings ArticleDOI
Petar Popovski, Zoran Utkovski 
30 Nov 2009
9 Citations
It turns out that the capacity results for the combinatorial communication model are related to the fundamental result by Shannon regarding channels with causal side information at the transmitter.
channel capacity and outperform other existing schemes.
We show through a number of examples that these methods can closely approach channel capacity.
The calculated information capacity is in good agreement with a random matrix channel model.

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