马尔可夫状态切换模型的时变转移概率

M. Bazzi, F. Blasques, S. J. Koopman, A. Lucas
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引用次数: 2

摘要

提出了一种具有时变概率的马尔可夫切换模型。我们模型的新颖之处在于,通过观测驱动模型,过渡概率随时间而变化。时变概率的创新是由预测似然函数的得分产生的。我们展示了如何容易地解释模型动力学。我们在蒙特卡罗研究中研究了该模型的性能,并表明该模型成功地估计了一系列未观察到的状态切换概率的不同动态模式。我们还通过研究美国工业生产增长的动态均值和方差行为,在实证环境中说明了新方法。我们发现制度转换概率变化的经验证据,在样本的早期部分具有更高的波动性制度的持久性,在样本的后期部分具有更低波动性制度的持久性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time Varying Transition Probabilities for Markov Regime Switching Models
We propose a new Markov switching model with time varying probabilities for the transitions. The novelty of our model is that the transition probabilities evolve over time by means of an observation driven model. The innovation of the time varying probability is generated by the score of the predictive likelihood function. We show how the model dynamics can be readily interpreted. We investigate the performance of the model in a Monte Carlo study and show that the model is successful in estimating a range of different dynamic patterns for unobserved regime switching probabilities. We also illustrate the new methodology in an empirical setting by studying the dynamic mean and variance behavior of U.S. Industrial Production growth. We find empirical evidence of changes in the regime switching probabilities, with more persistence for high volatility regimes in the earlier part of the sample, and more persistence for low volatility regimes in the later part of the sample.
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