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Some applications of nonlinear and non-Gaussian state-space modelling by means of hidden Markov models

机译:隐马尔可夫模型在非线性和非高斯状态空间建模中的一些应用

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Nonlinear and non-Gaussian state-space models (SSMs) are fitted to different types of time series. The applications include homogeneous and seasonal time series, in particular earthquake counts, polio counts, rainfall occurrence data, glacial varve data and daily returns on a share. The considered SSMs comprise Poisson, Bernoulli, gamma and Student-; distributions at the observation level. Parameter estimations for the SSMs are carried out using a likelihood approximation that is obtained after discretization of the state space. The approximation can be made arbitrarily accurate, and the approximated likelihood is precisely that of a finite-state hidden Markov model (HMM). The proposed method enables us to apply standard HMM techniques. It is easy to implement and can be extended to all kinds of SSMs in a straightforward manner.
机译:非线性和非高斯状态空间模型(SSM)适合于不同类型的时间序列。这些应用程序包括均匀和季节性的时间序列,特别是地震计数,小儿麻痹症计数,降雨发生数据,冰川变量数据和日均收益。所考虑的SSM包括Poisson,Bernoulli,gamma和Student-;观测级别的分布。使用状态空间离散化后获得的似然近似来执行SSM的参数估计。可以任意精确地近似,并且近似的可能性恰好是有限状态隐马尔可夫模型(HMM)的可能性。所提出的方法使我们能够应用标准的HMM技术。它易于实现,并且可以直接方式扩展到各种SSM。

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