Tight Bounds on the Renyi Entropy via Majorization with Applications to Guessing and Compression

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Abstract

This paper provides tight bounds on the Rényi 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. To that end, a tight lower bound on the Rényi entropy of a discrete random variable with a finite support is derived as a function of the size of the support, and the ratio of the maximal to minimal probability masses. This work was inspired by the recently published paper by Cicalese et al., which is focused on the Shannon entropy, and it strengthens and generalizes the results of that paper to Rényi entropies of arbitrary positive orders. In view of these generalized bounds and the works by Arikan and Campbell, non-asymptotic bounds are derived for guessing moments and lossless data compression of discrete memoryless sources.

Original languageEnglish
Article number896
Number of pages25
JournalEntropy
Volume20
Issue number12
DOIs
StatePublished - 1 Dec 2018

Keywords

  • Huffman algorithm
  • Majorization
  • Renyi divergence
  • Renyi entropy
  • Tunstall codes
  • cumulant generating functions
  • fixed-to-variable source codes
  • guessing moments
  • lossless source coding

All Science Journal Classification (ASJC) codes

  • General Physics and Astronomy

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