English

Bounds for Learning Lossless Source Coding

Information Theory 2020-09-21 v1 Machine Learning math.IT

Abstract

This paper asks a basic question: how much training is required to beat a universal source coder? Traditionally, there have been two types of source coders: fixed, optimum coders such as Huffman coders; and universal source coders, such as Lempel-Ziv The paper considers a third type of source coders: learned coders. These are coders that are trained on data of a particular type, and then used to encode new data of that type. This is a type of coder that has recently become very popular for (lossy) image and video coding. The paper consider two criteria for performance of learned coders: the average performance over training data, and a guaranteed performance over all training except for some error probability PeP_e. In both cases the coders are evaluated with respect to redundancy. The paper considers the IID binary case and binary Markov chains. In both cases it is shown that the amount of training data required is very moderate: to code sequences of length ll the amount of training data required to beat a universal source coder is m=Klloglm=K\frac{l}{\log l}, where the constant in front depends the case considered.

Keywords

Cite

@article{arxiv.2009.08562,
  title  = {Bounds for Learning Lossless Source Coding},
  author = {Anders Host-Madsen},
  journal= {arXiv preprint arXiv:2009.08562},
  year   = {2020}
}

Comments

Submitted to IEEE Transactions on Information Theory

R2 v1 2026-06-23T18:37:38.056Z