Title :
Mixing Strategies in Data Compression
Author :
Mattern, Christopher
Author_Institution :
Fak. fur Inf. und Automatisierung, Tech. Univ. Ilmenau, Ilmenau, Germany
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.
Keywords :
data compression; optimisation; trees (mathematics); PAQ-weighting; data compression; generic linear mixture; geometric weighting; nonbinary alphabet; optimal weights; weight optimization; weight vectors; Adaptation models; Data compression; Data models; Encoding; Estimation; Optimization; Vectors;
Conference_Titel :
Data Compression Conference (DCC), 2012
Conference_Location :
Snowbird, UT
Print_ISBN :
978-1-4673-0715-4
DOI :
10.1109/DCC.2012.40