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Recursive estimation of high-order Markov chains: Approximation by finite mixtures

机译:高阶马尔可夫链的递归估计:有限混合的逼近

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摘要

A high-order Markov chain is a universal model of stochastic relations between discrete-valued variables. The exact estimation of its transition probabilities suffers from the curse of dimensionality. It requires an excessive amount of informative observations as well as an extreme memory for storing the corresponding sufficient statistic. The paper bypasses this problem by considering a rich subset of Markov-chain models, namely, mixtures of low dimensional Markov chains, possibly with external variables. It uses Bayesian approximate estimation suitable for a subsequent decision making under uncertainty. The proposed recursive (sequential, one-pass) estimator updates a product of Dirichlet probability densities (pds) used as an approximate posterior pd, projects the result back to this class of pds and applies an improved data-dependent stabilised forgetting, which counteracts the dangerous accumulation of approximation errors. (C) 2015 Elsevier Inc. All rights reserved.
机译:高阶马尔可夫链是离散值变量之间的随机关系的通用模型。对其转换概率的精确估计受维度诅咒的困扰。它需要大量的信息性观察以及用于存储相应足够统计信息的极限内存。本文通过考虑丰富的马尔可夫链模型子集(即低维马尔可夫链的混合,可能带有外部变量)来绕过此问题。它使用贝叶斯近似估计,适用于不确定性下的后续决策。拟议的递归(顺序,一次通过)估计器更新用作近似后验pd的Dirichlet概率密度(pds)的乘积,将结果投影回此类pds并应用改进的数据相关稳定遗忘,从而抵消逼近误差的危险累积。 (C)2015 Elsevier Inc.保留所有权利。

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