马尔可夫切换

Yong Song, T. Wo'zniak
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引用次数: 4

摘要

马尔可夫切换模型是一类以状态或特定状态值的形式在参数中引入时间变化的模型。这种时间变化是由一个具有有限记忆的潜在离散值随机过程控制的。更具体地说,状态指标的当前值是由前一时期的状态指标的值决定的,这只意味着马尔可夫属性。转移矩阵通过确定每个状态在当前周期的状态下有条件地在下一周期访问的概率来表征马尔可夫过程的特性。这种设置决定了马尔可夫切换模型的两个主要优点:通过使用滤波和平滑方法估计每个样本周期中状态发生的概率,以及估计特定于状态的参数。这两个特征打开了解释与特定状态相关联的参数与相应状态概率相结合的可能性。这个家族中最常用的模型是那些假设有限数量的制度和马尔可夫过程的外生性的模型,这被定义为它独立于模型的不可预测的创新。在许多这样的应用中,通过对转移概率施加适当的限制或通过引入由解释变量或状态指示器函数决定的这些概率的时间依赖性,可以获得马尔可夫切换模型的期望性质。这个基本规范的扩展之一包括无限隐马尔可夫模型,该模型通过允许状态的数量趋于无穷大,提供了极大的灵活性和出色的预测性能。另一个扩展,即内生马尔可夫转换模型,明确地将状态指标与模型的创新联系起来,使其更具可解释性,并为发展提供了有希望的途径。
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Markov Switching
Markov switching models are a family of models that introduces time variation in the parameters in the form of their state, or regime-specific values. This time variation is governed by a latent discrete-valued stochastic process with limited memory. More specifically, the current value of the state indicator is determined by the value of the state indicator from the previous period only implying the Markov property. A transition matrix characterizes the properties of the Markov process by determining with what probability each of the states can be visited next period conditionally on the state in the current period. This setup decides on the two main advantages of the Markov switching models: the estimation of the probability of state occurrences in each of the sample periods by using filtering and smoothing methods and the estimation of the state-specific parameters. These two features open the possibility for interpretations of the parameters associated with specific regimes combined with the corresponding regime probabilities. The most commonly applied models from this family are those that presume a finite number of regimes and the exogeneity of the Markov process, which is defined as its independence from the model’s unpredictable innovations. In many such applications, the desired properties of the Markov switching model have been obtained either by imposing appropriate restrictions on transition probabilities or by introducing the time dependence of these probabilities determined by explanatory variables or functions of the state indicator. One of the extensions of this basic specification includes infinite hidden Markov models that provide great flexibility and excellent forecasting performance by allowing the number of states to go to infinity. Another extension, the endogenous Markov switching model, explicitly relates the state indicator to the model’s innovations, making it more interpretable and offering promising avenues for development.
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