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An MCMC computational approach for a continuous time state-dependent regime switching diffusion process

机译:用于连续时间依赖性调节切换扩散过程的MCMC计算方法

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ABSTRACT State-dependent regime switching diffusion processes or hybrid switching diffusion (HSD) processes are hard to simulate with classical methods which leads us to adopt a Markov chain Monte Carlo (MCMC) Bayesian approach very convenient to estimate complicated models such as the HSD one. In the HSD, the diffusion component is dependent on the switching discrete hidden regimes and the transition rates of the regime switching are dependent on the diffusion observations. Since in reality phenomena are only observed in discrete times, data imputation is called for to create more observations so as to have good approximations for the density of the diffusion process. Three categories of entities will be computed in a Bayesian context: The latent imputed observations, the regime switching states, and the parameters of the models. The latent imputed data is updated at random time intervals in block using a Metropolis Hastings algorithm. The switching states are computed by an adaptation of a forward filtering backward smoothing algorithm to the HSD model. The parameters are estimated after prior specifications and conditional posterior densities formulation using Gibbs sampler or Metropolis Hastings algorithm.
机译:摘要的状态依赖性政权切换扩散过程或混合开关扩散(HSD)流程很难通过经典方法来模拟,导致我们采用Markov链Monte Carlo(MCMC)贝叶斯方法非常方便地估计诸如HSD之类的复杂模型。在HSD中,扩散分量取决于切换离散的隐藏制度,并且政权切换的转换速率取决于扩散观察。由于仅在离散时间仅观察到现实现象,因此被调用数据载荷来创建更多观察,以便具有良好的扩散过程密度的良好近似。三类实体将在贝叶斯语境中计算:潜在的避税观察,政权切换状态和模型的参数。使用Metropolis Hastings算法,在块中以随机时间间隔更新潜在的数据。通过将前向滤波向后平滑平滑算法的适配来计算切换状态,使HSD模型进行调整。在使用GIBBS采样器或Metropolis Hastings算法的现有规范和条件后密度配方之后估计参数。

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