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Consistency of the maximum likelihood estimator in seasonal hidden Markov models

机译:季节隐马尔可夫模型中最大似然估计器的一致性

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In this paper, we introduce a variant of hidden Markov models in which the transition probabilities between the states, as well as the emission distributions, are not constant in time but vary in a periodic manner. This class of models, which we will call seasonal hidden Markov models (SHMMs), is particularly useful in practice, as many applications involve a seasonal behaviour. However, up to now, there is no theoretical result regarding this kind of model. We show that under mild assumptions, SHMMs are identifiable: we can identify the transition matrices and the emission distributions from the joint distribution of the observations on a period, up to state labelling. We also give sufficient conditions for the strong consistency of the maximum likelihood estimator (MLE). These results are applied to simulated data, using the EM algorithm to compute the MLE. Finally, we show how SHMM can be used in real-world applications by applying our model to precipitation data, with mixtures of exponential distributions as emission distributions.
机译:在本文中,我们介绍了隐藏的马尔可夫模型的变体,其中州之间的过渡概率以及排放分布在时间上不是恒定的,而是以周期性的方式变化。这类模型,我们将调用季节性隐藏马尔可夫模型(SHMMS),在实践中特别有用,因为许多应用程序涉及季节性行为。但是,到目前为止,没有关于这种模型的理论结果。我们表明,在温和的假设下,SHMMS是可识别的:我们可以在一段时间内从观察的联合分布识别过渡矩阵和排放分布。我们还为最大似然估算器(MLE)的强大一致性提供了足够的条件。这些结果应用于模拟数据,使用EM算法计算MLE。最后,我们展示了SHMM如何通过将模型应用于降水数据,将指数分布的混合物作为排放分布。

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