Stochastic chains with memory of variable length
Probability
2008-04-15 v1
Abstract
Stochastic chains with memory of variable length constitute an interesting family of stochastic chains of infinite order on a finite alphabet. The idea is that for each past, only a finite suffix of the past, called context, is enough to predict the next symbol. These models were first introduced in the information theory literature by Rissanen (1983) as a universal tool to perform data compression. Recently, they have been used to model up scientific data in areas as different as biology, linguistics and music. This paper presents a personal introductory guide to this class of models focusing on the algorithm Context and its rate of convergence.
Keywords
Cite
@article{arxiv.0804.2050,
title = {Stochastic chains with memory of variable length},
author = {Antonio Galves and Eva Löcherbach},
journal= {arXiv preprint arXiv:0804.2050},
year = {2008}
}
Comments
17 pages