Mixing Strategies in Data Compression
Information Theory
2013-02-13 v1 math.IT
Abstract
We propose geometric weighting as a novel method to combine multiple models in data compression. Our results reveal the rationale behind PAQ-weighting and generalize it to a non-binary alphabet. Based on a similar technique we present a new, generic linear mixture technique. All novel mixture techniques rely on given weight vectors. We consider the problem of finding optimal weights and show that the weight optimization leads to a strictly convex (and thus, good-natured) optimization problem. Finally, an experimental evaluation compares the two presented mixture techniques for a binary alphabet. The results indicate that geometric weighting is superior to linear weighting.
Cite
@article{arxiv.1302.2839,
title = {Mixing Strategies in Data Compression},
author = {Christopher Mattern},
journal= {arXiv preprint arXiv:1302.2839},
year = {2013}
}
Comments
Data Compression Conference (DCC) 2012