Statistics of Random Binning Based on Tsallis Divergence

04/25/2023
by   Masoud Kavian, et al.
0

Random binning is a powerful and widely used tool in information theory. In this paper, considering the Tsallis measures, we examine the output statistics of random binning (OSRB). Using the OSRB framework, the achievable rate region of the wiretap channel with Tsallis divergence as a security measure is investigated.

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