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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Links between probabilistic automata and hidden Markov models: probability distributions, learning models and induction algorithms
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Links between probabilistic automata and hidden Markov models: probability distributions, learning models and induction algorithms

机译:概率自动机与隐马尔可夫模型之间的联系:概率分布,学习模型和归纳算法

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This article presents an overview of Probabilistic Automata (PA) and discrete Hidden Markov Models (HMMs), and aims at clarifying the links between them. The first part of this work concentrates on probability distributions generated by these models. Necessary and sufficient conditions for an automaton to define a probabilistic language are detailed. It is proved that probabilistic deterministic automata (PDFA) form a proper subclass of probabilistic non-deterministic automata (PNFA). Two families of equivalent models are described next. On one hand, HMMs and PNFA with no final probabilities generate distributions over complete finite prefix-free sets. On the other hand, HMMs with final probabilities and probabilistic automata Generate distributions over strings of finite length. The second part of this article presents several learning models, which formalize the problem of PA induction or, equivalently, the problem of HMM topology induction and parameter estimation. These learning models include the PAC and identification with probability I frameworks. Links with Bayesian learning are also discussed. The last part of this article presents an overview of induction algorithms for PA or HMMs using state merging, state splitting, parameter pruning and error-correcting techniques. (c) 2005 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:本文概述了概率自动机(PA)和离散隐马尔可夫模型(HMM),旨在阐明它们之间的联系。这项工作的第一部分集中于这些模型生成的概率分布。详细介绍了自动机定义概率语言的必要条件和充分条件。事实证明,概率确定性自动机(PDFA)构成了概率非确定性自动机(PNFA)的适当子类。接下来介绍两个等效模型系列。一方面,没有最终概率的HMM和PNFA在完整的有限无前缀集合上生成分布。另一方面,具有最终概率和概率自动机的HMM会在有限长度的字符串上生成分布。本文的第二部分介绍了几种学习模型,这些学习模型将PA归纳问题或HMM拓扑归纳和参数估计问题正式化。这些学习模型包括PAC和具有I概率框架的识别。还讨论了与贝叶斯学习的联系。本文的最后一部分概述了使用状态合并,状态拆分,参数修剪和纠错技术的PA或HMM归纳算法。 (c)2005模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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