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Explicit-Duration Markov Switching Models

机译:显式马尔可夫切换模型

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Markov switching models (MSMs) are probabilistic models that employ multiple sets of parameters to describe different dynamic regimes that a time series may exhibit at different periods of time. The switching mechanism between regimes is controlled by unobserved random variables that form a first-order Markov chain. Explicit-duration MSMs contain additional variables that explicitly model the distribution of time spent in each regime. This allows to define duration distributions of any form, but also to impose complex dependence between the observations and to reset the dynamics to initial conditions. Models that focus on the first two properties are most commonly known as hidden semi-Markov models or segment models, whilst models that focus on the third property are most commonly known as changepoint models or reset models. In this monograph, we provide a description of explicit-duration modelling by categorizing the different approaches into three groups, which differ in encoding in the explicit-duration variables different information about regime change/reset boundaries. The approaches are described using the formalism of graphical models, which allows to graphically represent and assess statistical dependence and therefore to easily describe the structure of complex models and derive inference routines. The presentation is intended to be pedagogical, focusing on providing a characterization of the three groups in terms of model structure constraints and inference properties. The monograph is supplemented with a software package that contains most of the models and examples described1. The material presented should be useful to both researchers wishing to learn about these models and researchers wishing to develop them further.
机译:马尔可夫切换模型(MSM)是一种概率模型,它使用多组参数来描述时间序列在不同时间段可能表现出的不同动态机制。体制之间的切换机制由形成一阶马尔可夫链的未观察到的随机变量控制。显式持续时间MSM包含其他变量,这些变量可以显式地模拟每种情况下花费的时间分布。这可以定义任何形式的持续时间分布,而且还可以在观测值之间施加复杂的依存关系,并将动力学重置为初始条件。专注于前两个属性的模型最常被称为隐藏半马尔可夫模型或分段模型,而专注于第三属性的模型最常被称为变更点模型或重置模型。在此专着中,我们通过将不同的方法分为三类来提供对显式持续时间建模的描述,这三种方法在显式持续时间变量的编码方面不同,其中包含有关体制变更/重置边界的不同信息。使用图形模型的形式描述方法,从而可以图形化表示和评估统计依存关系,因此可以轻松描述复杂模型的结构并导出推理例程。本演示旨在进行教学,重点是根据模型结构约束和推断属性提供对这三个组的表征。专着中补充了一个软件包,其中包含所描述的大多数模型和示例。提出的材料对于希望了解这些模型的研究人员和希望进一步开发它们的研究人员都应该是有用的。

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  • 来源
    《Foundations and trends in machine learning》 |2014年第6期|A113-79-1921-69717375-90|共85页
  • 作者

    Silvia Chiappa;

  • 作者单位

    Statistical Laboratory, University of Cambridge, UK Microsoft Research Cambridge, UK;

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  • 正文语种 eng
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