This work provides data-processing and majorization inequalities for $f$-divergences, and it considers some of their applications to coding problems. This work also provides tight bounds on the R\'{e}nyi entropy of a function of a discrete random variable with a finite number of possible values, where the considered function is not one-to-one, and their derivation is based on majorization and the Schur-concavity of the R\'{e}nyi entropy. One application of the $f$-divergence inequalities refers to the performance analysis of list decoding with either fixed or variable list sizes; some earlier bounds on the list decoding error probability are reproduced in a unified way, and new bounds are obtained and exemplified numerically. Another application is related to a study of the quality of approximating a probability mass function, which is induced by the leaves of a Tunstall tree, by an equiprobable distribution. The compression rates of finite-length Tunstall codes are further analyzed for asserting their closeness to the Shannon entropy of a memoryless and stationary discrete source. In view of the tight bounds for the R\'{e}nyi entropy and the work by Campbell, non-asymptotic bounds are derived for lossless data compression of discrete memoryless sources.
翻译:这项工作提供数据处理和大化不平等, 用于支付美元宽度, 并会考虑其中的一些应用, 用于编码问题 。 这项工作还提供 R\ { e} nyi 任意变量函数的严格范围, 该变量的分解随机变数具有一定数量的可能值, 所考虑的函数不是一对一, 其衍生依据是大度和 R\ { { e} nyi entropy 的Schur- concavity 。 $ $- diverence 不平等的一个应用, 是指对清单解码的性能分析, 无论是固定的还是变异的列表大小; 列表解码误差概率的一些较早的值以统一的方式复制, 并且从数字角度获取和示例。 另一个应用涉及研究约解密质质量的研究, 由松软树叶的分布, 一种可变的分布。 将不耐久的坦斯塔尔码压缩率进一步分析, 以显示其接近的内径不易的内存来源 。