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Strong Data Processing Inequalities and -Sobolev Inequalities for Discrete Channels

机译:离散通道的强数据处理不等式和-Sobolev不等式

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摘要

The noisiness of a channel can be measured by comparing suitable functionals of the input and output distributions. For instance, the worst case ratio of output relative entropy to input relative entropy for all possible pairs of input distributions is bounded from above by unity, by the data processing theorem. However, for a fixed reference input distribution, this quantity may be strictly smaller than one, giving the so-called strong data processing inequalities (SDPIs). The same considerations apply to an arbitrary -divergence. This paper presents a systematic study of optimal constants in the SDPIs for discrete channels, including their variational characterizations, upper and lower bounds, structural results for channels on product probability spaces, and the relationship between the SDPIs and the so-called -Sobolev inequalities (another class of inequalities that can be used to quantify the noisiness of a channel by controlling entropy-like functionals of the input distribution by suitable measures of input–output correlation). Several applications to information theory, discrete probability, and statistical physics are discussed.
机译:可以通过比较输入和输出分布的适当功能来测量通道的噪声。例如,通过数据处理定理,对于所有可能的输入分布对,输出相对熵与输入相对熵的最坏情况比率从上方限制为1。但是,对于固定的参考输入分布,此数量可能严格小于1,从而产生所谓的强数据处理不平等(SDPI)。相同的考虑适用于任意散度。本文对离散通道的SDPI中的最佳常数进行了系统的研究,包括其变化特征,上下限,乘积概率空间上通道的结构结果以及SDPI与所谓的-Sobolev不等式之间的关系(另一类不等式,可以通过适当的输入-输出相关度量来控制输入分布的类似熵的函数,从而量化信道的噪声。讨论了在信息论,离散概率和统计物理学中的几种应用。

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