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Some recent developments in Markov Chain Monte Carlo for cointegrated time series

机译:马尔可夫链蒙特卡罗用于协整时间序列的一些最新进展

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We consider multivariate time series that exhibit reduced rank cointegration, which means a lower dimensional linear projection of the process becomes stationary. We will review recent suitable Markov Chain Monte Carlo approaches for Bayesian inference such as the Gibbs sampler of [41] and the Geodesic Hamiltonian Monte Carlo method of [3]. Then we will propose extensions that can allow the ideas in both methods to be applied for cointegrated time series with non-Gaussian noise. We illustrate the efficiency and accuracy of these extensions using appropriate numerical experiments.
机译:我们认为多元时间序列的秩协整性降低,这意味着该过程的低维线性投影变得平稳。我们将回顾最近适用于贝叶斯推断的马尔可夫链蒙特卡罗方法,例如[41]的Gibbs采样器和[3]的大地测量汉密尔顿蒙特卡罗方法。然后,我们将提出扩展,以使这两种方法中的思想都可以应用于具有非高斯噪声的协整时间序列。我们使用适当的数值实验来说明这些扩展的效率和准确性。

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