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A Universal Random Coding Ensemble for Sample-wise Lossy Compression

Information Theory 2022-12-26 v1 math.IT

Abstract

We propose a universal ensemble for random selection of rate-distortion codes, which is asymptotically optimal in a sample-wise sense. According to this ensemble, each reproduction vector, \hbx\hbx, is selected independently at random under the probability distribution that is proportional to 2LZ(\hbx)2^{-LZ(\hbx)}, where LZ(\hbx)LZ(\hbx) is the code-length of \hbx\hbx pertaining to the 1978 version of the Lempel-Ziv (LZ) algorithm. We show that, with high probability, the resulting codebook gives rise to an asymptotically optimal variable-rate lossy compression scheme under an arbitrary distortion measure, in the sense that a matching converse theorem also holds. According to the converse theorem, even if the decoder knew \ell-th order type of source vector in advance (\ell being a large but fixed positive integer), the performance of the above-mentioned code could not have been improved essentially, for the vast majority of codewords that represent all source vectors in the same type. Finally, we provide a discussion of our results, which includes, among other things, a comparison to a coding scheme that selects the reproduction vector with the shortest LZ code length among all vectors that are within the allowed distortion from the source vector.

Keywords

Cite

@article{arxiv.2212.12208,
  title  = {A Universal Random Coding Ensemble for Sample-wise Lossy Compression},
  author = {Neri Merhav},
  journal= {arXiv preprint arXiv:2212.12208},
  year   = {2022}
}

Comments

22 pages, submitted for publication