Capacity upper bounds for deletion-type channels

Mahdi Cheraghchi
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引用次数: 41

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. The corresponding univariate function is carefully designed according to the underlying distribution of repetitions and the choices vary depending on the desired strength of the upper bounds as well as the desired simplicity of the function (e.g., being only efficiently computable versus having an explicit closed-form expression in terms of elementary, or common special, functions). Among our results, we show that the capacity of the binary deletion channel with deletion probability d is at most (1−d) logϕ for d ≥ 1/2, and, assuming the capacity function is convex, is at most 1−d log(4/ϕ) for d<1/2, where ϕ=(1+√5)/2 is the golden ratio. This is the first nontrivial capacity upper bound for any value of d outside the limiting case d → 0 that is fully explicit and proved without computer assistance. Furthermore, we derive the first set of capacity upper bounds for the Poisson-repeat channel. Our results uncover further striking connections between this channel and the deletion channel, and suggest, somewhat counter-intuitively, that the Poisson-repeat channel is actually analytically simpler than the deletion channel and may be of key importance to a complete understanding of the deletion channel. Finally, we derive several novel upper bounds on the capacity of the deletion channel. All upper bounds are maximums of efficiently computable, and concave, univariate real functions over a bounded domain. In turn, we upper bound these functions in terms of explicit elementary and standard special functions, whose maximums can be found even more efficiently (and sometimes, analytically, for example for d=1/2). Along the way, we develop several new techniques of potentially independent interest. For example, we develop systematic techniques to study channels with mean constraints over the reals. Furthermore, we motivate the study of novel probability distributions over non-negative integers, as well as novel special functions which could be of interest to mathematical analysis.
删除类型通道的容量上限
我们开发了一种基于凸规划和实数分析的系统方法,用于获得二进制删除信道的容量上界,更一般地说,具有iid插入和删除的信道。除了经典的删除信道,我们特别关注由Mitzenmacher和Drinea (IEEE Transactions on Information Theory, 2006)引入的泊松重复信道。我们的框架可用于获得任何重复分布(与伯努利分布和泊松分布的特殊情况相对应的删除和泊松-重复通道)的容量上界。我们的技术从本质上减少了证明容量上界的任务,使单变量、实值和通常在有界区间内凹函数最大化。相应的单变量函数是根据重复的潜在分布精心设计的,选择取决于上界的期望强度以及函数的期望简单性(例如,仅可有效计算,而不是根据初等函数或普通特殊函数具有显式的封闭形式表达式)。在我们的研究结果中,我们表明,对于d≥1/2,删除概率为d的二进制删除通道的容量最多为(1−d) logϕ,并且,假设容量函数是凸的,对于d<1/2,最大为1−d log(4/ϕ),其中ϕ=(1+√5)/2是黄金比例。这是在极限情况d→0之外的任何d值的非平凡容量上界的第一个完全显式且无需计算机辅助证明的。进一步,我们导出了泊松重复信道的第一组容量上界。我们的研究结果进一步揭示了该通道和删除通道之间的惊人联系,并表明,在某种程度上与直觉相反,泊松重复通道实际上在分析上比删除通道更简单,并且可能对完全理解删除通道至关重要。最后,我们给出了删除信道容量的几个新的上界。所有上界都是有效可计算的、凹的、单变量实函数在有界域上的最大值。反过来,我们用显式初等函数和标准特殊函数为这些函数上界,它们的最大值可以更有效地找到(有时,解析地,例如d=1/2)。在此过程中,我们开发了几种潜在的独立兴趣的新技术。例如,我们开发了系统的技术来研究具有对实数的平均约束的信道。此外,我们鼓励研究非负整数上的新概率分布,以及可能对数学分析感兴趣的新特殊函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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