Capacity Upper Bounds for Deletion-Type Channels
Mahdi Cheraghchi

TL;DR
This paper introduces a convex programming framework to derive explicit upper bounds on the capacity of deletion and related channels, including the Poisson-repeat channel, advancing understanding of their limits.
Contribution
It provides the first explicit, non-computer-assisted capacity upper bounds for the binary deletion channel across all deletion probabilities and introduces bounds for the Poisson-repeat channel.
Findings
Capacity upper bound for deletion probability d ≥ 1/2: (1-d) log φ.
Capacity upper bound for deletion probability d < 1/2: 1 - d log(4/φ), assuming convexity.
First capacity bounds for the Poisson-repeat channel.
Abstract
We develop a systematic approach, based on convex programming and real analysis, for obtaining upper bounds on the capacity of the binary deletion channel and, more generally, channels with i.i.d. insertions and deletions. Other than the classical deletion channel, we give a special attention to the Poisson-repeat channel introduced by Mitzenmacher and Drinea (IEEE Transactions on Information Theory, 2006). Our framework can be applied to obtain capacity upper bounds for any repetition distribution (the deletion and Poisson-repeat channels corresponding to the special cases of Bernoulli and Poisson distributions). Our techniques essentially reduce the task of proving capacity upper bounds to maximizing a univariate, real-valued, and often concave function over a bounded interval. We show the following: 1. The capacity of the binary deletion channel with deletion probability is at…
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