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Forward/backwardstate and modelparameter estimation for continuum-state hidden Markov models (CHMM) with Dirichlet state distributions

机译:具有Dirichlet状态分布的连续状态隐马尔可夫模型(CHMM)的前/后状态和模型参数估计

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In this paper, the foundations of the theory of the continuum-state HMM (cHMM) are extended to include a forward/ backward algorithm producing probability densities analogous to those in conventional HMMs, and algorithms for estimating the parameters of the state transition density and the constituent output densities. The α and β densities are approximated as Dirichlet distributions, providing for nearly closed form, “closed” operations. The EM algorithm is extended to apply to the parameter estimation problem. Major results are presented, with details and proofs omitted due to space.
机译:本文扩展了连续状态HMM(cHMM)理论的基础,以包括产生与传统HMM相似的概率密度的前向/后向算法,以及估计状态转移密度和状态参数的算法。成分输出密度。 α和β密度近似为Dirichlet分布,提供了近似封闭的形式,“封闭”的操作。 EM算法被扩展以应用于参数估计问题。介绍了主要结果,由于篇幅所限,省略了细节和证明。

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