上下文树模型上的一类先验分布及其贝叶斯码的有效算法

T. Matsushima, S. Hirasawa
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引用次数: 3

摘要

CTW(上下文树加权)算法是一种针对上下文树模型的高效通用编码算法。CTW算法被解释为假设上下文树模型具有特殊先验分布的非预测贝叶斯编码算法。在CTW算法中,一种有效的递归计算方法是利用集合上下文树。对于具有特殊先验分布的贝叶斯码,虽然已有有效的递归算法,但对先验分布类的基本性质研究甚少。本文给出了上下文树模型上具有与共轭先验类相似性质的先验分布类的确切定义。我们表明后验分布也包括在与先验分布相同的分布类中。因此,我们也可以利用先验分布类在上下文树模型上构造一种高效的预测贝叶斯码算法。最后研究了码的渐近平均码长。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Class of Prior Distributions on Context Tree Models and an Efficient Algorithm of the Bayes Codes Assuming It
The CTW (context tree weighting) algorithm is an efficient universal coding algorithm on context tree models. The CTW algorithm has been interpreted as the non-predictive Bayes coding algorithm assuming a special prior distribution over context tree models. An efficient recursive calculation method using a gathering context tree in the CTW algorithm is well known. Although there exist efficient recursive algorithms for the Bayes codes assuming a special class of prior distributions, the basic property of the prior distribution class has been scarcely investigated. In this paper we show the exact definition of a prior distribution class on context tree models that has the similar property to the class of conjugate priors. We show the posterior distribution is also included in the same distribution class as the prior distribution class. So we can also construct an efficient algorithm of predictive Bayes codes on context tree models by using the prior distribution class. Lastly the asymptotic mean code length of the codes is investigated.
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